func TestDaxpy(t *testing.T) { fmt.Printf("* L1 * test axpy: Y = alpha * X + Y\n") X := matrix.FloatVector([]float64{1, 1, 1}) Y := matrix.FloatVector([]float64{0, 0, 0}) fmt.Printf("before:\nX=\n%v\nY=\n%v\n", X, Y) Axpy(X, Y, matrix.FScalar(5.0)) fmt.Printf("after:\nX=\n%v\nY=\n%v\n", X, Y) }
func main() { flag.Parse() if len(spPath) > 0 { checkpnt.Reset(spPath) checkpnt.Activate() checkpnt.Verbose(spVerbose) checkpnt.Format("%.17f") } gdata := [][]float64{ []float64{16., 7., 24., -8., 8., -1., 0., -1., 0., 0., 7., -5., 1., -5., 1., -7., 1., -7., -4.}, []float64{-14., 2., 7., -13., -18., 3., 0., 0., -1., 0., 3., 13., -6., 13., 12., -10., -6., -10., -28.}, []float64{5., 0., -15., 12., -6., 17., 0., 0., 0., -1., 9., 6., -6., 6., -7., -7., -6., -7., -11.}} hdata := []float64{-3., 5., 12., -2., -14., -13., 10., 0., 0., 0., 68., -30., -19., -30., 99., 23., -19., 23., 10.} c := matrix.FloatVector([]float64{-6., -4., -5.}) G := matrix.FloatMatrixFromTable(gdata) h := matrix.FloatVector(hdata) dims := sets.NewDimensionSet("l", "q", "s") dims.Set("l", []int{2}) dims.Set("q", []int{4, 4}) dims.Set("s", []int{3}) var solopts cvx.SolverOptions solopts.MaxIter = 30 solopts.ShowProgress = true if maxIter > 0 { solopts.MaxIter = maxIter } if len(solver) > 0 { solopts.KKTSolverName = solver } sol, err := cvx.ConeLp(c, G, h, nil, nil, dims, &solopts, nil, nil) if err == nil { x := sol.Result.At("x")[0] s := sol.Result.At("s")[0] z := sol.Result.At("z")[0] fmt.Printf("Optimal\n") fmt.Printf("x=\n%v\n", x.ToString("%.9f")) fmt.Printf("s=\n%v\n", s.ToString("%.9f")) fmt.Printf("z=\n%v\n", z.ToString("%.9f")) check(x, s, z) } else { fmt.Printf("status: %s\n", err) } }
func main() { flag.Parse() gdata0 := [][]float64{ []float64{12., 13., 12.}, []float64{6., -3., -12.}, []float64{-5., -5., 6.}} gdata1 := [][]float64{ []float64{3., 3., -1., 1.}, []float64{-6., -6., -9., 19.}, []float64{10., -2., -2., -3.}} c := matrix.FloatVector([]float64{-2.0, 1.0, 5.0}) g0 := matrix.FloatMatrixFromTable(gdata0, matrix.ColumnOrder) g1 := matrix.FloatMatrixFromTable(gdata1, matrix.ColumnOrder) Ghq := sets.FloatSetNew("Gq", "hq") Ghq.Append("Gq", g0, g1) h0 := matrix.FloatVector([]float64{-12.0, -3.0, -2.0}) h1 := matrix.FloatVector([]float64{27.0, 0.0, 3.0, -42.0}) Ghq.Append("hq", h0, h1) var Gl, hl, A, b *matrix.FloatMatrix = nil, nil, nil, nil var solopts cvx.SolverOptions solopts.MaxIter = 30 solopts.ShowProgress = true if maxIter > -1 { solopts.MaxIter = maxIter } if len(solver) > 0 { solopts.KKTSolverName = solver } sol, err := cvx.Socp(c, Gl, hl, A, b, Ghq, &solopts, nil, nil) fmt.Printf("status: %v\n", err) if sol != nil && sol.Status == cvx.Optimal { x := sol.Result.At("x")[0] fmt.Printf("x=\n%v\n", x.ToString("%.9f")) for i, m := range sol.Result.At("sq") { fmt.Printf("sq[%d]=\n%v\n", i, m.ToString("%.9f")) } for i, m := range sol.Result.At("zq") { fmt.Printf("zq[%d]=\n%v\n", i, m.ToString("%.9f")) } sq0 := sol.Result.At("sq")[0] sq1 := sol.Result.At("sq")[1] zq0 := sol.Result.At("zq")[0] zq1 := sol.Result.At("zq")[1] check(x, sq0, sq1, zq0, zq1) } }
func TestAcent(t *testing.T) { // matrix string in row order presentation Adata := [][]float64{ []float64{-7.44e-01, 1.11e-01, 1.29e+00, 2.62e+00, -1.82e+00}, []float64{4.59e-01, 7.06e-01, 3.16e-01, -1.06e-01, 7.80e-01}, []float64{-2.95e-02, -2.22e-01, -2.07e-01, -9.11e-01, -3.92e-01}, []float64{-7.75e-01, 1.03e-01, -1.22e+00, -5.74e-01, -3.32e-01}, []float64{-1.80e+00, 1.24e+00, -2.61e+00, -9.31e-01, -6.38e-01}} bdata := []float64{ 8.38e-01, 9.92e-01, 9.56e-01, 6.14e-01, 6.56e-01, 3.57e-01, 6.36e-01, 5.08e-01, 8.81e-03, 7.08e-02} // these are solution obtained from running cvxopt acent.py with above data solData := []float64{-11.59728373909344512, -1.35196389161339936, 7.21894899350256303, -3.29159917142051528, 4.90454147385329176} ntData := []float64{ 1.5163484265903457, 1.2433928210771914, 1.0562922103520955, 0.8816246051011607, 0.7271128861543598, 0.42725003346248974, 0.0816777301914883, 0.0005458037072843131, 1.6259980735305693e-10} b := matrix.FloatVector(bdata) Al := matrix.FloatMatrixFromTable(Adata, matrix.RowOrder) Au := matrix.Scale(Al, -1.0) A := matrix.FloatZeros(2*Al.Rows(), Al.Cols()) A.SetSubMatrix(0, 0, Al) A.SetSubMatrix(Al.Rows(), 0, Au) x, nt, err := acent(A, b, 10) if err != nil { t.Logf("Acent error: %s", err) t.Fail() } solref := matrix.FloatVector(solData) ntref := matrix.FloatVector(ntData) soldf := matrix.Minus(x, solref) ntdf := matrix.Minus(matrix.FloatVector(nt), ntref) solNrm := blas.Nrm2Float(soldf) ntNrm := blas.Nrm2Float(ntdf) t.Logf("x [diff=%.2e]:\n%v\n", solNrm, x) t.Logf("nt [diff=%.2e]:\n%v\n", ntNrm, nt) if solNrm > TOL { t.Log("solution deviates too much from expected\n") t.Fail() } }
func _TestRankSmall(t *testing.T) { bM := 5 bN := 5 //bP := 5 Adata := [][]float64{ []float64{1.0, 1.0, 1.0, 1.0, 1.0}, []float64{2.0, 2.0, 2.0, 2.0, 2.0}, []float64{3.0, 3.0, 3.0, 3.0, 3.0}, []float64{4.0, 4.0, 4.0, 4.0, 4.0}, []float64{5.0, 5.0, 5.0, 5.0, 5.0}} A := matrix.FloatMatrixFromTable(Adata, matrix.RowOrder) A0 := matrix.FloatMatrixFromTable(Adata, matrix.RowOrder) X := matrix.FloatVector([]float64{1.0, 2.0, 3.0, 4.0, 5.0}) Y := matrix.FloatWithValue(bN, 1, 2.0) Ar := A.FloatArray() Xr := X.FloatArray() Yr := Y.FloatArray() blas.GerFloat(X, Y, A0, 1.0) DRankMV(Ar, Xr, Yr, 1.0, A.LeadingIndex(), 1, 1, 0, bN, 0, bM, 4, 4) ok := A0.AllClose(A) t.Logf("A0 == A1: %v\n", ok) if !ok { t.Logf("blas ger:\n%v\n", A0) t.Logf("A1: \n%v\n", A) } }
// Dscal: X = alpha * X func TestDscal(t *testing.T) { fmt.Printf("* L1 * test scal: X = alpha * X\n") alpha := matrix.FScalar(2.0) A := matrix.FloatVector([]float64{1.0, 1.0, 1.0, 1.0, 1.0, 1.0}) Scal(A, alpha) fmt.Printf("Dscal 2.0 * A\n") fmt.Printf("%s\n", A) A = matrix.FloatVector([]float64{1.0, 1.0, 1.0, 1.0, 1.0, 1.0}) Scal(A, alpha, &linalg.IOpt{"offset", 3}) fmt.Printf("Dscal 2.0 * A[3:]\n") fmt.Printf("%s\n", A) A = matrix.FloatVector([]float64{1.0, 1.0, 1.0, 1.0, 1.0, 1.0}) fmt.Printf("Dscal 2.0* A[::2]\n") Scal(A, alpha, &linalg.IOpt{"inc", 2}) fmt.Printf("%s\n", A) }
// v = X.T * Y func TestDdot(t *testing.T) { fmt.Printf("* L1 * test dot: X.T*Y\n") A := matrix.FloatVector([]float64{1.0, 1.0, 1.0, 1.0, 1.0, 1.0}) B := matrix.FloatVector([]float64{2.0, 2.0, 2.0, 2.0, 2.0, 2.0}) v1 := Dot(A, B) v2 := Dot(A, B, &linalg.IOpt{"offset", 3}) v3 := Dot(A, B, &linalg.IOpt{"inc", 2}) fmt.Printf("Ddot: X.T * Y\n") fmt.Printf("%.3f\n", v1.Float()) fmt.Printf("%.3f\n", v2.Float()) fmt.Printf("%.3f\n", v3.Float()) // Output: // 12.000 // 6.000 // 6.000 }
func (gp *gpConvexProg) F1(x *matrix.FloatMatrix) (f, Df *matrix.FloatMatrix, err error) { f = nil Df = nil err = nil f = matrix.FloatZeros(gp.mnl+1, 1) Df = matrix.FloatZeros(gp.mnl+1, gp.n) y := gp.g.Copy() blas.GemvFloat(gp.F, x, y, 1.0, 1.0) for i, s := range gp.ind { start := s[0] stop := s[1] // yi := exp(yi) = exp(Fi*x+gi) ymax := maxvec(y.FloatArray()[start:stop]) // ynew = exp(y[start:stop] - ymax) ynew := matrix.Exp(matrix.FloatVector(y.FloatArray()[start:stop]).Add(-ymax)) y.SetIndexesFromArray(ynew.FloatArray(), matrix.Indexes(start, stop)...) // fi = log sum yi = log sum exp(Fi*x+gi) ysum := blas.AsumFloat(y, &la.IOpt{"n", stop - start}, &la.IOpt{"offset", start}) f.SetIndex(i, ymax+math.Log(ysum)) blas.ScalFloat(y, 1.0/ysum, &la.IOpt{"n", stop - start}, &la.IOpt{"offset", start}) blas.GemvFloat(gp.F, y, Df, 1.0, 0.0, la.OptTrans, &la.IOpt{"m", stop - start}, &la.IOpt{"incy", gp.mnl + 1}, &la.IOpt{"offseta", start}, &la.IOpt{"offsetx", start}, &la.IOpt{"offsety", i}) } return }
func main() { var A, b *matrix.FloatMatrix = nil, nil m, n := 20, 20 blas.PanicOnError(true) matrix.PanicOnError(true) flag.Parse() if len(spPath) > 0 { checkpnt.Reset(spPath) checkpnt.Activate() checkpnt.Verbose(spVerbose) checkpnt.Format("%.17f") } if len(AVal) > 0 { A, _ = matrix.FloatParse(AVal) if A == nil { fmt.Printf("could not parse:\n%s\n", AVal) return } } else { A = matrix.FloatNormal(m, n) } if len(bVal) > 0 { b, _ = matrix.FloatParse(bVal) if b == nil { fmt.Printf("could not parse:\n%s\n", bVal) return } } else { b = matrix.FloatNormal(m, 1) } sol, err := qcl1(A, b) if sol != nil { r := sol.Result.At("x")[0] x := matrix.FloatVector(r.FloatArray()[:A.Cols()]) r = sol.Result.At("z")[0] z := matrix.FloatVector(r.FloatArray()[r.NumElements()-A.Rows():]) fmt.Printf("x=\n%v\n", x.ToString("%.9f")) fmt.Printf("z=\n%v\n", z.ToString("%.9f")) check(x, z) } else { fmt.Printf("status: %v\n", err) } }
func TestDgemv(t *testing.T) { fmt.Printf("* L2 * test gemv: Y = alpha * A * X + beta * Y\n") A := matrix.FloatNew(3, 2, []float64{1, 1, 1, 2, 2, 2}) X := matrix.FloatVector([]float64{1, 1}) Y := matrix.FloatVector([]float64{0, 0, 0}) alpha := matrix.FScalar(1.0) beta := matrix.FScalar(0.0) fmt.Printf("before: alpha=1.0, beta=0.0\nA=\n%v\nX=\n%v\nY=\n%v\n", A, X, Y) err := Gemv(A, X, Y, alpha, beta) fmt.Printf("after:\nA=\n%v\nX=\n%v\nY=\n%v\n", A, X, Y) fmt.Printf("* L2 * test gemv: X = alpha * A.T * Y + beta * X\n") err = Gemv(A, Y, X, alpha, beta, linalg.OptTrans) if err != nil { fmt.Printf("error: %s\n", err) } fmt.Printf("after:\nA=\n%v\nX=\n%v\nY=\n%v\n", A, X, Y) }
func main() { flag.Parse() if len(spPath) > 0 { checkpnt.Reset(spPath) checkpnt.Activate() checkpnt.Verbose(spVerbose) checkpnt.Format("%.17f") } adata := [][]float64{ []float64{0.3, -0.4, -0.2, -0.4, 1.3}, []float64{0.6, 1.2, -1.7, 0.3, -0.3}, []float64{-0.3, 0.0, 0.6, -1.2, -2.0}} A := matrix.FloatMatrixFromTable(adata, matrix.ColumnOrder) b := matrix.FloatVector([]float64{1.5, 0.0, -1.2, -0.7, 0.0}) _, n := A.Size() N := n + 1 + n h := matrix.FloatZeros(N, 1) h.SetIndex(n, 1.0) I0 := matrix.FloatDiagonal(n, -1.0) I1 := matrix.FloatIdentity(n) G, _ := matrix.FloatMatrixStacked(matrix.StackDown, I0, matrix.FloatZeros(1, n), I1) At := A.Transpose() P := At.Times(A) q := At.Times(b).Scale(-1.0) dims := sets.NewDimensionSet("l", "q", "s") dims.Set("l", []int{n}) dims.Set("q", []int{n + 1}) var solopts cvx.SolverOptions solopts.MaxIter = 20 solopts.ShowProgress = true if maxIter > 0 { solopts.MaxIter = maxIter } if len(solver) > 0 { solopts.KKTSolverName = solver } sol, err := cvx.ConeQp(P, q, G, h, nil, nil, dims, &solopts, nil) if err == nil { x := sol.Result.At("x")[0] s := sol.Result.At("s")[0] z := sol.Result.At("z")[0] fmt.Printf("Optimal\n") fmt.Printf("x=\n%v\n", x.ToString("%.9f")) fmt.Printf("s=\n%v\n", s.ToString("%.9f")) fmt.Printf("z=\n%v\n", z.ToString("%.9f")) check(x, s, z) } }
func (p *floorPlan) F2(x, z *matrix.FloatMatrix) (f, Df, H *matrix.FloatMatrix, err error) { f, Df, err = p.F1(x) x17 := matrix.FloatVector(x.FloatArray()[17:]) tmp := matrix.Div(p.Amin, matrix.Pow(x17, 3.0)) tmp = matrix.Mul(z, tmp).Scale(2.0) diag := matrix.FloatDiagonal(5, tmp.FloatArray()...) H = matrix.FloatZeros(22, 22) H.SetSubMatrix(17, 17, diag) return }
func main() { flag.Parse() x := floorplan(matrix.FloatWithValue(5, 1, 100.0)) if x != nil { W := x.GetIndex(0) H := x.GetIndex(1) xs := matrix.FloatVector(x.FloatArray()[2:7]) ys := matrix.FloatVector(x.FloatArray()[7:12]) ws := matrix.FloatVector(x.FloatArray()[12:17]) hs := matrix.FloatVector(x.FloatArray()[17:]) fmt.Printf("W = %.5f, H = %.5f\n", W, H) fmt.Printf("x = \n%v\n", xs.ToString("%.5f")) fmt.Printf("y = \n%v\n", ys.ToString("%.5f")) fmt.Printf("w = \n%v\n", ws.ToString("%.5f")) fmt.Printf("h = \n%v\n", hs.ToString("%.5f")) check(x) } }
func sinv(x, y *matrix.FloatMatrix, dims *sets.DimensionSet, mnl int) (err error) { /*DEBUGGED*/ err = nil // For the nonlinear and 'l' blocks: // // yk o\ xk = yk .\ xk. ind := mnl + dims.At("l")[0] blas.Tbsv(y, x, &la_.IOpt{"n", ind}, &la_.IOpt{"k", 0}, &la_.IOpt{"ldA", 1}) // For the 'q' blocks: // // [ l0 -l1' ] // yk o\ xk = 1/a^2 * [ ] * xk // [ -l1 (a*I + l1*l1')/l0 ] // // where yk = (l0, l1) and a = l0^2 - l1'*l1. for _, m := range dims.At("q") { aa := blas.Nrm2Float(y, &la_.IOpt{"n", m - 1}, &la_.IOpt{"offset", ind + 1}) ee := y.GetIndex(ind) aa = (ee + aa) * (ee - aa) cc := x.GetIndex(ind) dd := blas.DotFloat(x, y, &la_.IOpt{"n", m - 1}, &la_.IOpt{"offsetx", ind + 1}, &la_.IOpt{"offsety", ind + 1}) x.SetIndex(ind, cc*ee-dd) blas.ScalFloat(x, aa/ee, &la_.IOpt{"n", m - 1}, &la_.IOpt{"offset", ind + 1}) blas.AxpyFloat(y, x, dd/ee-cc, &la_.IOpt{"n", m - 1}, &la_.IOpt{"offsetx", ind + 1}, &la_.IOpt{"offsety", ind + 1}) blas.ScalFloat(x, 1.0/aa, &la_.IOpt{"n", m}, &la_.IOpt{"offset", ind}) ind += m } // For the 's' blocks: // // yk o\ xk = xk ./ gamma // // where gammaij = .5 * (yk_i + yk_j). ind2 := ind for _, m := range dims.At("s") { for j := 0; j < m; j++ { u := matrix.FloatVector(y.FloatArray()[ind2+j : ind2+m]) u.Add(y.GetIndex(ind2 + j)) u.Scale(0.5) blas.Tbsv(u, x, &la_.IOpt{"n", m - j}, &la_.IOpt{"k", 0}, &la_.IOpt{"lda", 1}, &la_.IOpt{"offsetx", ind + j*(m+1)}) } ind += m * m ind2 += m } return }
func (p *floorPlan) F1(x *matrix.FloatMatrix) (f, Df *matrix.FloatMatrix, err error) { err = nil mn := x.Min(-1, -2, -3, -4, -5) if mn <= 0.0 { f, Df = nil, nil return } zeros := matrix.FloatZeros(5, 12) dk1 := matrix.FloatDiagonal(5, -1.0) dk2 := matrix.FloatZeros(5, 5) x17 := matrix.FloatVector(x.FloatArray()[17:]) // -( Amin ./ (x17 .* x17) ) diag := matrix.Div(p.Amin, matrix.Mul(x17, x17)).Scale(-1.0) dk2.SetIndexesFromArray(diag.FloatArray(), matrix.MakeDiagonalSet(5)...) Df, _ = matrix.FloatMatrixStacked(matrix.StackRight, zeros, dk1, dk2) x12 := matrix.FloatVector(x.FloatArray()[12:17]) // f = -x[12:17] + div(Amin, x[17:]) == div(Amin, x[17:]) - x[12:17] f = matrix.Minus(matrix.Div(p.Amin, x17), x12) return }
func main() { flag.Parse() if len(spPath) > 0 { checkpnt.Reset(spPath) checkpnt.Activate() checkpnt.Verbose(spVerbose) checkpnt.Format("%.17f") } gdata := [][]float64{ []float64{2.0, 1.0, -1.0, 0.0}, []float64{1.0, 2.0, 0.0, -1.0}} c := matrix.FloatVector([]float64{-4.0, -5.0}) G := matrix.FloatMatrixFromTable(gdata, matrix.ColumnOrder) h := matrix.FloatVector([]float64{3.0, 3.0, 0.0, 0.0}) var solopts cvx.SolverOptions solopts.MaxIter = 30 solopts.ShowProgress = true if maxIter > -1 { solopts.MaxIter = maxIter } if len(solver) > 0 { solopts.KKTSolverName = solver } sol, err := cvx.Lp(c, G, h, nil, nil, &solopts, nil, nil) if sol != nil && sol.Status == cvx.Optimal { x := sol.Result.At("x")[0] s := sol.Result.At("s")[0] z := sol.Result.At("z")[0] fmt.Printf("x=\n%v\n", x.ToString("%.9f")) fmt.Printf("s=\n%v\n", s.ToString("%.9f")) fmt.Printf("z=\n%v\n", z.ToString("%.9f")) check(x, s, z) } else { fmt.Printf("status: %v\n", err) } }
// The analytic centering with cone constraints example of section 9.1 // (Problems with nonlinear objectives). func TestCp(t *testing.T) { xref := []float64{0.41132359189354400, 0.55884774432611484, -0.72007090016957931} F := &acenterProg{3, 1} gdata := [][]float64{ []float64{0., -1., 0., 0., -21., -11., 0., -11., 10., 8., 0., 8., 5.}, []float64{0., 0., -1., 0., 0., 10., 16., 10., -10., -10., 16., -10., 3.}, []float64{0., 0., 0., -1., -5., 2., -17., 2., -6., 8., -17., -7., 6.}} G := matrix.FloatMatrixFromTable(gdata) h := matrix.FloatVector( []float64{1.0, 0.0, 0.0, 0.0, 20., 10., 40., 10., 80., 10., 40., 10., 15.}) var solopts SolverOptions solopts.MaxIter = 40 solopts.ShowProgress = false dims := sets.NewDimensionSet("l", "q", "s") dims.Set("l", []int{0}) dims.Set("q", []int{4}) dims.Set("s", []int{3}) sol, err := Cp(F, G, h, nil, nil, dims, &solopts) if err == nil && sol.Status == Optimal { x := sol.Result.At("x")[0] t.Logf("x = \n%v\n", x.ToString("%.9f")) xe, _ := nrmError(matrix.FloatVector(xref), x) if xe > TOL { t.Logf("x differs [%.3e] from exepted too much.", xe) t.Fail() } } else { t.Logf("result: %v\n", err) t.Fail() } }
// a = sum(X) func TestDasum(t *testing.T) { fmt.Printf("* L1 * test sum: sum(X)\n") A := matrix.FloatVector([]float64{1.0, 1.0, 1.0, 1.0, 1.0, 1.0}) v1 := Asum(A, &linalg.IOpt{"offset", 0}) v2 := Asum(A, &linalg.IOpt{"offset", 3}) v3 := Asum(A, &linalg.IOpt{"inc", 2}) fmt.Printf("Dasum\n") fmt.Printf("%.3f\n", v1.Float()) fmt.Printf("%.3f\n", v2.Float()) fmt.Printf("%.3f\n", v3.Float()) // Output: // 6.000 // 3.000 // 3.000 }
// a = norm2(A) func TestDnrm2(t *testing.T) { fmt.Printf("* L1 * test sum: nrm2(X)\n") A := matrix.FloatVector([]float64{1.0, 1.0, 1.0, 1.0, 1.0, 1.0}) v1 := Nrm2(A, &linalg.IOpt{"offset", 0}) v2 := Nrm2(A, &linalg.IOpt{"offset", 3}) v3 := Nrm2(A, &linalg.IOpt{"inc", 2}) fmt.Printf("Ddnrm2\n") fmt.Printf("%.3f\n", v1.Float()) fmt.Printf("%.3f\n", v2.Float()) fmt.Printf("%.3f\n", v3.Float()) // Output: // 2.499 // 1.732 // 1.732 }
// The small GP of section 9.3 (Geometric programming). func TestGp(t *testing.T) { xref := []float64{1.06032641296944741, 1.75347359157296845, 2.44603683900611868} aflr := 1000.0 awall := 100.0 alpha := 0.5 beta := 2.0 gamma := 0.5 delta := 2.0 fdata := [][]float64{ []float64{-1.0, 1.0, 1.0, 0.0, -1.0, 1.0, 0.0, 0.0}, []float64{-1.0, 1.0, 0.0, 1.0, 1.0, -1.0, 1.0, -1.0}, []float64{-1.0, 0.0, 1.0, 1.0, 0.0, 0.0, -1.0, 1.0}} gdata := []float64{1.0, 2.0 / awall, 2.0 / awall, 1.0 / aflr, alpha, 1.0 / beta, gamma, 1.0 / delta} g := matrix.FloatNew(8, 1, gdata).Log() F := matrix.FloatMatrixFromTable(fdata) K := []int{1, 2, 1, 1, 1, 1, 1} var solopts SolverOptions solopts.MaxIter = 40 solopts.ShowProgress = false solopts.KKTSolverName = "ldl" sol, err := Gp(K, F, g, nil, nil, nil, nil, &solopts) if sol != nil && sol.Status == Optimal { x := sol.Result.At("x")[0] r := matrix.Exp(x) h := r.GetIndex(0) w := r.GetIndex(1) d := r.GetIndex(2) t.Logf("x=\n%v\n", x.ToString("%.9f")) t.Logf("h = %f, w = %f, d = %f.\n", h, w, d) xe, _ := nrmError(matrix.FloatVector(xref), x) if xe > TOL { t.Logf("x differs [%.3e] from exepted too much.", xe) t.Fail() } } else { t.Logf("status: %v\n", err) t.Fail() } }
func (gp *gpConvexProg) F2(x, z *matrix.FloatMatrix) (f, Df, H *matrix.FloatMatrix, err error) { err = nil f = matrix.FloatZeros(gp.mnl+1, 1) Df = matrix.FloatZeros(gp.mnl+1, gp.n) H = matrix.FloatZeros(gp.n, gp.n) y := gp.g.Copy() Fsc := matrix.FloatZeros(gp.maxK, gp.n) blas.GemvFloat(gp.F, x, y, 1.0, 1.0) //fmt.Printf("y=\n%v\n", y.ToString("%.3f")) for i, s := range gp.ind { start := s[0] stop := s[1] // yi := exp(yi) = exp(Fi*x+gi) ymax := maxvec(y.FloatArray()[start:stop]) ynew := matrix.Exp(matrix.FloatVector(y.FloatArray()[start:stop]).Add(-ymax)) y.SetIndexesFromArray(ynew.FloatArray(), matrix.Indexes(start, stop)...) // fi = log sum yi = log sum exp(Fi*x+gi) ysum := blas.AsumFloat(y, &la.IOpt{"n", stop - start}, &la.IOpt{"offset", start}) f.SetIndex(i, ymax+math.Log(ysum)) blas.ScalFloat(y, 1.0/ysum, &la.IOpt{"n", stop - start}, &la.IOpt{"offset", start}) blas.GemvFloat(gp.F, y, Df, 1.0, 0.0, la.OptTrans, &la.IOpt{"m", stop - start}, &la.IOpt{"incy", gp.mnl + 1}, &la.IOpt{"offseta", start}, &la.IOpt{"offsetx", start}, &la.IOpt{"offsety", i}) Fsc.SetSubMatrix(0, 0, gp.F.GetSubMatrix(start, 0, stop-start)) for k := start; k < stop; k++ { blas.AxpyFloat(Df, Fsc, -1.0, &la.IOpt{"n", gp.n}, &la.IOpt{"incx", gp.mnl + 1}, &la.IOpt{"incy", Fsc.Rows()}, &la.IOpt{"offsetx", i}, &la.IOpt{"offsety", k - start}) blas.ScalFloat(Fsc, math.Sqrt(y.GetIndex(k)), &la.IOpt{"inc", Fsc.Rows()}, &la.IOpt{"offset", k - start}) } // H += z[i]*Hi = z[i] *Fisc' * Fisc blas.SyrkFloat(Fsc, H, z.GetIndex(i), 1.0, la.OptTrans, &la.IOpt{"k", stop - start}) } return }
func acenter() *matrix.FloatMatrix { F := &acenterProg{3, 1} gdata := [][]float64{ []float64{0., -1., 0., 0., -21., -11., 0., -11., 10., 8., 0., 8., 5.}, []float64{0., 0., -1., 0., 0., 10., 16., 10., -10., -10., 16., -10., 3.}, []float64{0., 0., 0., -1., -5., 2., -17., 2., -6., 8., -17., -7., 6.}} G := matrix.FloatMatrixFromTable(gdata) h := matrix.FloatVector( []float64{1.0, 0.0, 0.0, 0.0, 20., 10., 40., 10., 80., 10., 40., 10., 15.}) var solopts cvx.SolverOptions solopts.MaxIter = 40 solopts.ShowProgress = true if maxIter > -1 { solopts.MaxIter = maxIter } if len(solver) > 0 { solopts.KKTSolverName = solver } dims := sets.NewDimensionSet("l", "q", "s") dims.Set("l", []int{0}) dims.Set("q", []int{4}) dims.Set("s", []int{3}) var err error var sol *cvx.Solution sol, err = cvx.Cp(F, G, h, nil, nil, dims, &solopts) if err == nil && sol.Status == cvx.Optimal { return sol.Result.At("x")[0] } else { fmt.Printf("result: %v\n", err) } return nil }
func _TestMultMVSmall(t *testing.T) { bM := 5 bN := 4 A := matrix.FloatNormal(bM, bN) X := matrix.FloatVector([]float64{1.0, 2.0, 3.0, 4.0}) Y1 := matrix.FloatZeros(bM, 1) Y0 := matrix.FloatZeros(bM, 1) Ar := A.FloatArray() Xr := X.FloatArray() Y1r := Y1.FloatArray() blas.GemvFloat(A, X, Y0, 1.0, 1.0) DMultMV(Y1r, Ar, Xr, 1.0, 1.0, NOTRANS, 1, A.LeadingIndex(), 1, 0, bN, 0, bM, 4, 4) ok := Y0.AllClose(Y1) t.Logf("Y0 == Y1: %v\n", ok) if !ok { t.Logf("blas: Y=A*X\n%v\n", Y0) t.Logf("Y1: Y1 = A*X\n%v\n", Y1) } }
// X <--> Y func TestDswap(t *testing.T) { fmt.Printf("* L1 * test swap: X <--> Y\n") A := matrix.FloatVector([]float64{1.0, 1.0, 1.0, 1.0, 1.0, 1.0}) B := matrix.FloatVector([]float64{2.0, 2.0, 2.0, 2.0, 2.0, 2.0}) Swap(A, B) fmt.Printf("Dswap A, B\n") fmt.Printf("%s\n", A) A = matrix.FloatVector([]float64{1.0, 1.0, 1.0, 1.0, 1.0, 1.0}) B = matrix.FloatVector([]float64{2.0, 2.0, 2.0, 2.0, 2.0, 2.0}) Swap(A, B, &linalg.IOpt{"offset", 3}) fmt.Printf("Dswap A[3:], B[3:]\n") fmt.Printf("%s\n", A) A = matrix.FloatVector([]float64{1.0, 1.0, 1.0, 1.0, 1.0, 1.0}) B = matrix.FloatVector([]float64{2.0, 2.0, 2.0, 2.0, 2.0, 2.0}) fmt.Printf("Dswap A[::2], B[::2]\n") Swap(A, B, &linalg.IOpt{"inc", 2}) fmt.Printf("%s\n", A) }
func main() { Sdata := [][]float64{ []float64{4e-2, 6e-3, -4e-3, 0.0}, []float64{6e-3, 1e-2, 0.0, 0.0}, []float64{-4e-3, 0.0, 2.5e-3, 0.0}, []float64{0.0, 0.0, 0.0, 0.0}} pbar := matrix.FloatVector([]float64{.12, .10, .07, .03}) S := matrix.FloatMatrixFromTable(Sdata) n := pbar.Rows() G := matrix.FloatDiagonal(n, -1.0) h := matrix.FloatZeros(n, 1) A := matrix.FloatWithValue(1, n, 1.0) b := matrix.FloatNew(1, 1, []float64{1.0}) var solopts cvx.SolverOptions solopts.MaxIter = 30 solopts.ShowProgress = true mu := 1.0 Smu := matrix.Scale(S, mu) pbarNeg := matrix.Scale(pbar, -1.0) fmt.Printf("Smu=\n%v\n", Smu.String()) fmt.Printf("-pbar=\n%v\n", pbarNeg.String()) sol, err := cvx.Qp(Smu, pbarNeg, G, h, A, b, &solopts, nil) fmt.Printf("status: %v\n", err) if sol != nil && sol.Status == cvx.Optimal { x := sol.Result.At("x")[0] ret := blas.DotFloat(x, pbar) risk := math.Sqrt(blas.DotFloat(x, S.Times(x))) fmt.Printf("ret=%.3f, risk=%.3f\n", ret, risk) fmt.Printf("x=\n%v\n", x) } }
// Solves a pair of primal and dual SDPs // // minimize c'*x // subject to Gl*x + sl = hl // mat(Gs[k]*x) + ss[k] = hs[k], k = 0, ..., N-1 // A*x = b // sl >= 0, ss[k] >= 0, k = 0, ..., N-1 // // maximize -hl'*z - sum_k trace(hs[k]*zs[k]) - b'*y // subject to Gl'*zl + sum_k Gs[k]'*vec(zs[k]) + A'*y + c = 0 // zl >= 0, zs[k] >= 0, k = 0, ..., N-1. // // The inequalities sl >= 0 and zl >= 0 are elementwise vector // inequalities. The inequalities ss[k] >= 0, zs[k] >= 0 are matrix // inequalities, i.e., the symmetric matrices ss[k] and zs[k] must be // positive semidefinite. mat(Gs[k]*x) is the symmetric matrix X with // X[:] = Gs[k]*x. For a symmetric matrix, zs[k], vec(zs[k]) is the // vector zs[k][:]. // func Sdp(c, Gl, hl, A, b *matrix.FloatMatrix, Ghs *sets.FloatMatrixSet, solopts *SolverOptions, primalstart, dualstart *sets.FloatMatrixSet) (sol *Solution, err error) { if c == nil { err = errors.New("'c' must a column matrix") return } n := c.Rows() if n < 1 { err = errors.New("Number of variables must be at least 1") return } if Gl == nil { Gl = matrix.FloatZeros(0, n) } if Gl.Cols() != n { err = errors.New(fmt.Sprintf("'G' must be matrix with %d columns", n)) return } ml := Gl.Rows() if hl == nil { hl = matrix.FloatZeros(0, 1) } if !hl.SizeMatch(ml, 1) { err = errors.New(fmt.Sprintf("'hl' must be matrix of size (%d,1)", ml)) return } Gsset := Ghs.At("Gs") ms := make([]int, 0) for i, Gs := range Gsset { if Gs.Cols() != n { err = errors.New(fmt.Sprintf("'Gs' must be list of matrices with %d columns", n)) return } sz := int(math.Sqrt(float64(Gs.Rows()))) if Gs.Rows() != sz*sz { err = errors.New(fmt.Sprintf("the squareroot of the number of rows of 'Gq[%d]' is not an integer", i)) return } ms = append(ms, sz) } hsset := Ghs.At("hs") if len(Gsset) != len(hsset) { err = errors.New(fmt.Sprintf("'hs' must be a list of %d matrices", len(Gsset))) return } for i, hs := range hsset { if !hs.SizeMatch(ms[i], ms[i]) { s := fmt.Sprintf("hq[%d] has size (%d,%d). Expected size is (%d,%d)", i, hs.Rows(), hs.Cols(), ms[i], ms[i]) err = errors.New(s) return } } if A == nil { A = matrix.FloatZeros(0, n) } if A.Cols() != n { err = errors.New(fmt.Sprintf("'A' must be matrix with %d columns", n)) return } p := A.Rows() if b == nil { b = matrix.FloatZeros(0, 1) } if !b.SizeMatch(p, 1) { err = errors.New(fmt.Sprintf("'b' must be matrix of size (%d,1)", p)) return } dims := sets.NewDimensionSet("l", "q", "s") dims.Set("l", []int{ml}) dims.Set("s", ms) N := dims.Sum("l") + dims.SumSquared("s") // Map hs matrices to h vector h := matrix.FloatZeros(N, 1) h.SetIndexesFromArray(hl.FloatArray()[:ml], matrix.MakeIndexSet(0, ml, 1)...) ind := ml for k, hs := range hsset { h.SetIndexesFromArray(hs.FloatArray(), matrix.MakeIndexSet(ind, ind+ms[k]*ms[k], 1)...) ind += ms[k] * ms[k] } Gargs := make([]*matrix.FloatMatrix, 0) Gargs = append(Gargs, Gl) Gargs = append(Gargs, Gsset...) G, sizeg := matrix.FloatMatrixStacked(matrix.StackDown, Gargs...) var pstart, dstart *sets.FloatMatrixSet = nil, nil if primalstart != nil { pstart = sets.NewFloatSet("x", "s") pstart.Set("x", primalstart.At("x")[0]) slset := primalstart.At("sl") margs := make([]*matrix.FloatMatrix, 0, len(slset)+1) margs = append(margs, primalstart.At("s")[0]) margs = append(margs, slset...) sl, _ := matrix.FloatMatrixStacked(matrix.StackDown, margs...) pstart.Set("s", sl) } if dualstart != nil { dstart = sets.NewFloatSet("y", "z") dstart.Set("y", dualstart.At("y")[0]) zlset := primalstart.At("zl") margs := make([]*matrix.FloatMatrix, 0, len(zlset)+1) margs = append(margs, dualstart.At("z")[0]) margs = append(margs, zlset...) zl, _ := matrix.FloatMatrixStacked(matrix.StackDown, margs...) dstart.Set("z", zl) } //fmt.Printf("h=\n%v\n", h.ToString("%.3f")) //fmt.Printf("G=\n%v\n", G.ToString("%.3f")) sol, err = ConeLp(c, G, h, A, b, dims, solopts, pstart, dstart) // unpack sol.Result if err == nil { s := sol.Result.At("s")[0] sl := matrix.FloatVector(s.FloatArray()[:ml]) sol.Result.Append("sl", sl) ind := ml for _, m := range ms { sk := matrix.FloatNew(m, m, s.FloatArray()[ind:ind+m*m]) sol.Result.Append("ss", sk) ind += m * m } z := sol.Result.At("z")[0] zl := matrix.FloatVector(s.FloatArray()[:ml]) sol.Result.Append("zl", zl) ind = ml for i, k := range sizeg[1:] { zk := matrix.FloatNew(ms[i], ms[i], z.FloatArray()[ind:ind+k]) sol.Result.Append("zs", zk) ind += k } } sol.Result.Remove("s") sol.Result.Remove("z") return }
func main() { flag.Parse() if len(spPath) > 0 { checkpnt.Reset(spPath) checkpnt.Activate() checkpnt.Verbose(spVerbose) checkpnt.Format("%.17f") } gdata0 := [][]float64{ []float64{-7., -11., -11., 3.}, []float64{7., -18., -18., 8.}, []float64{-2., -8., -8., 1.}} gdata1 := [][]float64{ []float64{-21., -11., 0., -11., 10., 8., 0., 8., 5.}, []float64{0., 10., 16., 10., -10., -10., 16., -10., 3.}, []float64{-5., 2., -17., 2., -6., 8., -17., -7., 6.}} hdata0 := [][]float64{ []float64{33., -9.}, []float64{-9., 26.}} hdata1 := [][]float64{ []float64{14., 9., 40.}, []float64{9., 91., 10.}, []float64{40., 10., 15.}} g0 := matrix.FloatMatrixFromTable(gdata0, matrix.ColumnOrder) g1 := matrix.FloatMatrixFromTable(gdata1, matrix.ColumnOrder) Ghs := sets.FloatSetNew("Gs", "hs") Ghs.Append("Gs", g0, g1) h0 := matrix.FloatMatrixFromTable(hdata0, matrix.ColumnOrder) h1 := matrix.FloatMatrixFromTable(hdata1, matrix.ColumnOrder) Ghs.Append("hs", h0, h1) c := matrix.FloatVector([]float64{1.0, -1.0, 1.0}) var Gs, hs, A, b *matrix.FloatMatrix = nil, nil, nil, nil var solopts cvx.SolverOptions solopts.MaxIter = 30 solopts.ShowProgress = true if maxIter > -1 { solopts.MaxIter = maxIter } if len(solver) > 0 { solopts.KKTSolverName = solver } sol, err := cvx.Sdp(c, Gs, hs, A, b, Ghs, &solopts, nil, nil) if sol != nil && sol.Status == cvx.Optimal { x := sol.Result.At("x")[0] fmt.Printf("x=\n%v\n", x.ToString("%.9f")) for i, m := range sol.Result.At("zs") { fmt.Printf("zs[%d]=\n%v\n", i, m.ToString("%.9f")) } ss0 := sol.Result.At("ss")[0] ss1 := sol.Result.At("ss")[1] zs0 := sol.Result.At("zs")[0] zs1 := sol.Result.At("zs")[1] check(x, ss0, ss1, zs0, zs1) } else { fmt.Printf("status: %v\n", err) } checkpnt.Report() }
func TestConeLp(t *testing.T) { gdata := [][]float64{ []float64{16., 7., 24., -8., 8., -1., 0., -1., 0., 0., 7., -5., 1., -5., 1., -7., 1., -7., -4.}, []float64{-14., 2., 7., -13., -18., 3., 0., 0., -1., 0., 3., 13., -6., 13., 12., -10., -6., -10., -28.}, []float64{5., 0., -15., 12., -6., 17., 0., 0., 0., -1., 9., 6., -6., 6., -7., -7., -6., -7., -11.}} hdata := []float64{-3., 5., 12., -2., -14., -13., 10., 0., 0., 0., 68., -30., -19., -30., 99., 23., -19., 23., 10.} // these reference values obtained from running cvxopt conelp.py example xref := []float64{-1.22091525026262993, 0.09663323966626469, 3.57750155386611057} sref := []float64{ 0.00000172588537019, 13.35314040819201864, 94.28805677232460880, -53.44110853283719109, 18.97172963929198275, -75.32834138499130461, 10.00000013568614321, -1.22091525026262993, 0.09663323966626476, 3.57750155386611146, 44.05899318373081286, -58.82581769017131990, 4.26572401145687596, -58.82581769017131990, 124.10382738701650851, 40.46243652188705653, 4.26572401145687596, 40.46243652188705653, 47.17458693781828316} zref := []float64{ 0.09299833991484617, 0.00000001060210894, 0.23532251654806322, 0.13337937743566930, -0.04734875722474355, 0.18800192060450249, 0.00000001245876667, 0.00000000007816348, -0.00000000039584268, -0.00000000183463577, 0.12558704894101563, 0.08777794737598217, -0.08664401207348003, 0.08777794737598217, 0.06135161787371416, -0.06055906182304811, -0.08664401207348003, -0.06055906182304811, 0.05977675078191153} c := matrix.FloatVector([]float64{-6., -4., -5.}) G := matrix.FloatMatrixFromTable(gdata) h := matrix.FloatVector(hdata) dims := sets.DSetNew("l", "q", "s") dims.Set("l", []int{2}) dims.Set("q", []int{4, 4}) dims.Set("s", []int{3}) var solopts SolverOptions solopts.MaxIter = 30 solopts.ShowProgress = false sol, err := ConeLp(c, G, h, nil, nil, dims, &solopts, nil, nil) if err == nil { fail := false x := sol.Result.At("x")[0] s := sol.Result.At("s")[0] z := sol.Result.At("z")[0] t.Logf("Optimal\n") t.Logf("x=\n%v\n", x.ToString("%.9f")) t.Logf("s=\n%v\n", s.ToString("%.9f")) t.Logf("z=\n%v\n", z.ToString("%.9f")) xe, _ := nrmError(matrix.FloatVector(xref), x) if xe > TOL { t.Logf("x differs [%.3e] from exepted too much.", xe) fail = true } se, _ := nrmError(matrix.FloatVector(sref), s) if se > TOL { t.Logf("s differs [%.3e] from exepted too much.", se) fail = true } ze, _ := nrmError(matrix.FloatVector(zref), z) if ze > TOL { t.Logf("z differs [%.3e] from exepted too much.", ze) fail = true } if fail { t.Fail() } } else { t.Logf("status: %s\n", err) t.Fail() } }
func main() { m := 6 Vdata := [][]float64{ []float64{1.0, -1.0, -2.0, -2.0, 0.0, 1.5, 1.0}, []float64{1.0, 2.0, 1.0, -1.0, -2.0, -1.0, 1.0}} V := matrix.FloatMatrixFromTable(Vdata, matrix.RowOrder) // V[1, :m] - V[1,1:] a0 := matrix.Minus(V.GetSubMatrix(1, 0, 1, m), V.GetSubMatrix(1, 1, 1)) // V[0, :m] - V[0,1:] a1 := matrix.Minus(V.GetSubMatrix(0, 0, 1, m), V.GetSubMatrix(0, 1, 1)) A0, _ := matrix.FloatMatrixStacked(matrix.StackDown, a0.Scale(-1.0), a1) A0 = A0.Transpose() b0 := matrix.Mul(A0, V.GetSubMatrix(0, 0, 2, m).Transpose()) b0 = matrix.Times(b0, matrix.FloatWithValue(2, 1, 1.0)) A := make([]*matrix.FloatMatrix, 0) b := make([]*matrix.FloatMatrix, 0) A = append(A, A0) b = append(b, b0) // List of symbols C := make([]*matrix.FloatMatrix, 0) C = append(C, matrix.FloatZeros(2, 1)) var row *matrix.FloatMatrix = nil for k := 0; k < m; k++ { row = A0.GetRow(k, row) nrm := blas.Nrm2Float(row) row.Scale(2.0 * b0.GetIndex(k) / (nrm * nrm)) C = append(C, row.Transpose()) } // Voronoi set around C[1] A1 := matrix.FloatZeros(3, 2) A1.SetSubMatrix(0, 0, A0.GetSubMatrix(0, 0, 1).Scale(-1.0)) A1.SetSubMatrix(1, 0, matrix.Minus(C[m], C[1]).Transpose()) A1.SetSubMatrix(2, 0, matrix.Minus(C[2], C[1]).Transpose()) b1 := matrix.FloatZeros(3, 1) b1.SetIndex(0, -b0.GetIndex(0)) v := matrix.Times(A1.GetRow(1, nil), matrix.Plus(C[m], C[1])).Float() * 0.5 b1.SetIndex(1, v) v = matrix.Times(A1.GetRow(2, nil), matrix.Plus(C[2], C[1])).Float() * 0.5 b1.SetIndex(2, v) A = append(A, A1) b = append(b, b1) // Voronoi set around C[2] ... C[5] for k := 2; k < 6; k++ { A1 = matrix.FloatZeros(3, 2) A1.SetSubMatrix(0, 0, A0.GetSubMatrix(k-1, 0, 1).Scale(-1.0)) A1.SetSubMatrix(1, 0, matrix.Minus(C[k-1], C[k]).Transpose()) A1.SetSubMatrix(2, 0, matrix.Minus(C[k+1], C[k]).Transpose()) b1 = matrix.FloatZeros(3, 1) b1.SetIndex(0, -b0.GetIndex(k-1)) v := matrix.Times(A1.GetRow(1, nil), matrix.Plus(C[k-1], C[k])).Float() * 0.5 b1.SetIndex(1, v) v = matrix.Times(A1.GetRow(2, nil), matrix.Plus(C[k+1], C[k])).Float() * 0.5 b1.SetIndex(2, v) A = append(A, A1) b = append(b, b1) } // Voronoi set around C[6] A1 = matrix.FloatZeros(3, 2) A1.SetSubMatrix(0, 0, A0.GetSubMatrix(5, 0, 1).Scale(-1.0)) A1.SetSubMatrix(1, 0, matrix.Minus(C[1], C[6]).Transpose()) A1.SetSubMatrix(2, 0, matrix.Minus(C[5], C[6]).Transpose()) b1 = matrix.FloatZeros(3, 1) b1.SetIndex(0, -b0.GetIndex(5)) v = matrix.Times(A1.GetRow(1, nil), matrix.Plus(C[1], C[6])).Float() * 0.5 b1.SetIndex(1, v) v = matrix.Times(A1.GetRow(2, nil), matrix.Plus(C[5], C[6])).Float() * 0.5 b1.SetIndex(2, v) A = append(A, A1) b = append(b, b1) P := matrix.FloatIdentity(2) q := matrix.FloatZeros(2, 1) solopts := &cvx.SolverOptions{ShowProgress: false, MaxIter: 30} ovals := make([]float64, 0) for k := 1; k < 7; k++ { sol, err := cvx.Qp(P, q, A[k], b[k], nil, nil, solopts, nil) _ = err x := sol.Result.At("x")[0] ovals = append(ovals, math.Pow(blas.Nrm2Float(x), 2.0)) } optvals := matrix.FloatVector(ovals) //fmt.Printf("optvals=\n%v\n", optvals) rangeFunc := func(n int) []float64 { r := make([]float64, 0) for i := 0; i < n; i++ { r = append(r, float64(i)) } return r } nopts := 200 sigmas := matrix.FloatVector(rangeFunc(nopts)) sigmas.Scale((0.5 - 0.2) / float64(nopts)).Add(0.2) bndsVal := func(sigma float64) float64 { // 1.0 - sum(exp( -optvals/(2*sigma**2))) return 1.0 - matrix.Exp(matrix.Scale(optvals, -1.0/(2*sigma*sigma))).Sum() } bnds := matrix.FloatZeros(sigmas.NumElements(), 1) for j, v := range sigmas.FloatArray() { bnds.SetIndex(j, bndsVal(v)) } plotData("plot.png", sigmas.FloatArray(), bnds.FloatArray()) }
// Internal CPL solver for CP and CLP problems. Everything is wrapped to proper interfaces func cpl_solver(F ConvexVarProg, c MatrixVariable, G MatrixVarG, h *matrix.FloatMatrix, A MatrixVarA, b MatrixVariable, dims *sets.DimensionSet, kktsolver KKTCpSolverVar, solopts *SolverOptions, x0 MatrixVariable, mnl int) (sol *Solution, err error) { const ( STEP = 0.99 BETA = 0.5 ALPHA = 0.01 EXPON = 3 MAX_RELAXED_ITERS = 8 ) var refinement int sol = &Solution{Unknown, nil, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0} feasTolerance := FEASTOL absTolerance := ABSTOL relTolerance := RELTOL maxIter := MAXITERS if solopts.FeasTol > 0.0 { feasTolerance = solopts.FeasTol } if solopts.AbsTol > 0.0 { absTolerance = solopts.AbsTol } if solopts.RelTol > 0.0 { relTolerance = solopts.RelTol } if solopts.Refinement > 0 { refinement = solopts.Refinement } else { refinement = 1 } if solopts.MaxIter > 0 { maxIter = solopts.MaxIter } if x0 == nil { mnl, x0, err = F.F0() if err != nil { return } } if c == nil { err = errors.New("Must define objective.") return } if h == nil { h = matrix.FloatZeros(0, 1) } if dims == nil { err = errors.New("Problem dimensions not defined.") return } if err = checkConeLpDimensions(dims); err != nil { return } cdim := dims.Sum("l", "q") + dims.SumSquared("s") cdim_diag := dims.Sum("l", "q", "s") if h.Rows() != cdim { err = errors.New(fmt.Sprintf("'h' must be float matrix of size (%d,1)", cdim)) return } if G == nil { err = errors.New("'G' must be non-nil MatrixG interface.") return } fG := func(x, y MatrixVariable, alpha, beta float64, trans la.Option) error { return G.Gf(x, y, alpha, beta, trans) } // Check A and set defaults if it is nil if A == nil { err = errors.New("'A' must be non-nil MatrixA interface.") return } fA := func(x, y MatrixVariable, alpha, beta float64, trans la.Option) error { return A.Af(x, y, alpha, beta, trans) } if b == nil { err = errors.New("'b' must be non-nil MatrixVariable interface.") return } if kktsolver == nil { err = errors.New("nil kktsolver not allowed.") return } x := x0.Copy() y := b.Copy() y.Scal(0.0) z := matrix.FloatZeros(mnl+cdim, 1) s := matrix.FloatZeros(mnl+cdim, 1) ind := mnl + dims.At("l")[0] z.SetIndexes(1.0, matrix.MakeIndexSet(0, ind, 1)...) s.SetIndexes(1.0, matrix.MakeIndexSet(0, ind, 1)...) for _, m := range dims.At("q") { z.SetIndexes(1.0, ind) s.SetIndexes(1.0, ind) ind += m } for _, m := range dims.At("s") { iset := matrix.MakeIndexSet(ind, ind+m*m, m+1) z.SetIndexes(1.0, iset...) s.SetIndexes(1.0, iset...) ind += m * m } rx := x0.Copy() ry := b.Copy() dx := x.Copy() dy := y.Copy() rznl := matrix.FloatZeros(mnl, 1) rzl := matrix.FloatZeros(cdim, 1) dz := matrix.FloatZeros(mnl+cdim, 1) ds := matrix.FloatZeros(mnl+cdim, 1) lmbda := matrix.FloatZeros(mnl+cdim_diag, 1) lmbdasq := matrix.FloatZeros(mnl+cdim_diag, 1) sigs := matrix.FloatZeros(dims.Sum("s"), 1) sigz := matrix.FloatZeros(dims.Sum("s"), 1) dz2 := matrix.FloatZeros(mnl+cdim, 1) ds2 := matrix.FloatZeros(mnl+cdim, 1) newx := x.Copy() newy := y.Copy() newrx := x0.Copy() newz := matrix.FloatZeros(mnl+cdim, 1) news := matrix.FloatZeros(mnl+cdim, 1) newrznl := matrix.FloatZeros(mnl, 1) rx0 := rx.Copy() ry0 := ry.Copy() rznl0 := matrix.FloatZeros(mnl, 1) rzl0 := matrix.FloatZeros(cdim, 1) x0, dx0 := x.Copy(), dx.Copy() y0, dy0 := y.Copy(), dy.Copy() z0 := matrix.FloatZeros(mnl+cdim, 1) dz0 := matrix.FloatZeros(mnl+cdim, 1) dz20 := matrix.FloatZeros(mnl+cdim, 1) s0 := matrix.FloatZeros(mnl+cdim, 1) ds0 := matrix.FloatZeros(mnl+cdim, 1) ds20 := matrix.FloatZeros(mnl+cdim, 1) checkpnt.AddMatrixVar("z", z) checkpnt.AddMatrixVar("s", s) checkpnt.AddMatrixVar("dz", dz) checkpnt.AddMatrixVar("ds", ds) checkpnt.AddMatrixVar("rznl", rznl) checkpnt.AddMatrixVar("rzl", rzl) checkpnt.AddMatrixVar("lmbda", lmbda) checkpnt.AddMatrixVar("lmbdasq", lmbdasq) checkpnt.AddMatrixVar("z0", z0) checkpnt.AddMatrixVar("dz0", dz0) checkpnt.AddVerifiable("c", c) checkpnt.AddVerifiable("x", x) checkpnt.AddVerifiable("rx", rx) checkpnt.AddVerifiable("dx", dx) checkpnt.AddVerifiable("newrx", newrx) checkpnt.AddVerifiable("newx", newx) checkpnt.AddVerifiable("x0", x0) checkpnt.AddVerifiable("dx0", dx0) checkpnt.AddVerifiable("rx0", rx0) checkpnt.AddVerifiable("y", y) checkpnt.AddVerifiable("dy", dy) W0 := sets.NewFloatSet("d", "di", "dnl", "dnli", "v", "r", "rti", "beta") W0.Set("dnl", matrix.FloatZeros(mnl, 1)) W0.Set("dnli", matrix.FloatZeros(mnl, 1)) W0.Set("d", matrix.FloatZeros(dims.At("l")[0], 1)) W0.Set("di", matrix.FloatZeros(dims.At("l")[0], 1)) W0.Set("beta", matrix.FloatZeros(len(dims.At("q")), 1)) for _, n := range dims.At("q") { W0.Append("v", matrix.FloatZeros(n, 1)) } for _, n := range dims.At("s") { W0.Append("r", matrix.FloatZeros(n, n)) W0.Append("rti", matrix.FloatZeros(n, n)) } lmbda0 := matrix.FloatZeros(mnl+dims.Sum("l", "q", "s"), 1) lmbdasq0 := matrix.FloatZeros(mnl+dims.Sum("l", "q", "s"), 1) var f MatrixVariable = nil var Df MatrixVarDf = nil var H MatrixVarH = nil var ws3, wz3, wz2l, wz2nl *matrix.FloatMatrix var ws, wz, wz2, ws2 *matrix.FloatMatrix var wx, wx2, wy, wy2 MatrixVariable var gap, gap0, theta1, theta2, theta3, ts, tz, phi, phi0, mu, sigma, eta float64 var resx, resy, reszl, resznl, pcost, dcost, dres, pres, relgap float64 var resx0, resznl0, dres0, pres0 float64 var dsdz, dsdz0, step, step0, dphi, dphi0, sigma0, eta0 float64 var newresx, newresznl, newgap, newphi float64 var W *sets.FloatMatrixSet var f3 KKTFuncVar checkpnt.AddFloatVar("gap", &gap) checkpnt.AddFloatVar("pcost", &pcost) checkpnt.AddFloatVar("dcost", &dcost) checkpnt.AddFloatVar("pres", &pres) checkpnt.AddFloatVar("dres", &dres) checkpnt.AddFloatVar("relgap", &relgap) checkpnt.AddFloatVar("step", &step) checkpnt.AddFloatVar("dsdz", &dsdz) checkpnt.AddFloatVar("resx", &resx) checkpnt.AddFloatVar("resy", &resy) checkpnt.AddFloatVar("reszl", &reszl) checkpnt.AddFloatVar("resznl", &resznl) // Declare fDf and fH here, they bind to Df and H as they are already declared. // ??really?? var fDf func(u, v MatrixVariable, alpha, beta float64, trans la.Option) error = nil var fH func(u, v MatrixVariable, alpha, beta float64) error = nil relaxed_iters := 0 for iters := 0; iters <= maxIter+1; iters++ { checkpnt.MajorNext() checkpnt.Check("loopstart", 10) checkpnt.MinorPush(10) if refinement != 0 || solopts.Debug { f, Df, H, err = F.F2(x, matrix.FloatVector(z.FloatArray()[:mnl])) fDf = func(u, v MatrixVariable, alpha, beta float64, trans la.Option) error { return Df.Df(u, v, alpha, beta, trans) } fH = func(u, v MatrixVariable, alpha, beta float64) error { return H.Hf(u, v, alpha, beta) } } else { f, Df, err = F.F1(x) fDf = func(u, v MatrixVariable, alpha, beta float64, trans la.Option) error { return Df.Df(u, v, alpha, beta, trans) } } checkpnt.MinorPop() gap = sdot(s, z, dims, mnl) // these are helpers, copies of parts of z,s z_mnl := matrix.FloatVector(z.FloatArray()[:mnl]) z_mnl2 := matrix.FloatVector(z.FloatArray()[mnl:]) s_mnl := matrix.FloatVector(s.FloatArray()[:mnl]) s_mnl2 := matrix.FloatVector(s.FloatArray()[mnl:]) // rx = c + A'*y + Df'*z[:mnl] + G'*z[mnl:] // -- y, rx MatrixArg mCopy(c, rx) fA(y, rx, 1.0, 1.0, la.OptTrans) fDf(&matrixVar{z_mnl}, rx, 1.0, 1.0, la.OptTrans) fG(&matrixVar{z_mnl2}, rx, 1.0, 1.0, la.OptTrans) resx = math.Sqrt(rx.Dot(rx)) // rznl = s[:mnl] + f blas.Copy(s_mnl, rznl) blas.AxpyFloat(f.Matrix(), rznl, 1.0) resznl = blas.Nrm2Float(rznl) // rzl = s[mnl:] + G*x - h blas.Copy(s_mnl2, rzl) blas.AxpyFloat(h, rzl, -1.0) fG(x, &matrixVar{rzl}, 1.0, 1.0, la.OptNoTrans) reszl = snrm2(rzl, dims, 0) // Statistics for stopping criteria // pcost = c'*x // dcost = c'*x + y'*(A*x-b) + znl'*f(x) + zl'*(G*x-h) // = c'*x + y'*(A*x-b) + znl'*(f(x)+snl) + zl'*(G*x-h+sl) // - z'*s // = c'*x + y'*ry + znl'*rznl + zl'*rzl - gap //pcost = blas.DotFloat(c, x) pcost = c.Dot(x) dcost = pcost + blas.DotFloat(y.Matrix(), ry.Matrix()) + blas.DotFloat(z_mnl, rznl) dcost += sdot(z_mnl2, rzl, dims, 0) - gap if pcost < 0.0 { relgap = gap / -pcost } else if dcost > 0.0 { relgap = gap / dcost } else { relgap = math.NaN() } pres = math.Sqrt(resy*resy + resznl*resznl + reszl*reszl) dres = resx if iters == 0 { resx0 = math.Max(1.0, resx) resznl0 = math.Max(1.0, resznl) pres0 = math.Max(1.0, pres) dres0 = math.Max(1.0, dres) gap0 = gap theta1 = 1.0 / gap0 theta2 = 1.0 / resx0 theta3 = 1.0 / resznl0 } phi = theta1*gap + theta2*resx + theta3*resznl pres = pres / pres0 dres = dres / dres0 if solopts.ShowProgress { if iters == 0 { // some headers fmt.Printf("% 10s% 12s% 10s% 8s% 7s\n", "pcost", "dcost", "gap", "pres", "dres") } fmt.Printf("%2d: % 8.4e % 8.4e % 4.0e% 7.0e% 7.0e\n", iters, pcost, dcost, gap, pres, dres) } checkpnt.Check("checkgap", 50) // Stopping criteria if (pres <= feasTolerance && dres <= feasTolerance && (gap <= absTolerance || (!math.IsNaN(relgap) && relgap <= relTolerance))) || iters == maxIter { if iters == maxIter { s := "Terminated (maximum number of iterations reached)" if solopts.ShowProgress { fmt.Printf(s + "\n") } err = errors.New(s) sol.Status = Unknown } else { err = nil sol.Status = Optimal } sol.Result = sets.NewFloatSet("x", "y", "znl", "zl", "snl", "sl") sol.Result.Set("x", x.Matrix()) sol.Result.Set("y", y.Matrix()) sol.Result.Set("znl", matrix.FloatVector(z.FloatArray()[:mnl])) sol.Result.Set("zl", matrix.FloatVector(z.FloatArray()[mnl:])) sol.Result.Set("sl", matrix.FloatVector(s.FloatArray()[mnl:])) sol.Result.Set("snl", matrix.FloatVector(s.FloatArray()[:mnl])) sol.Gap = gap sol.RelativeGap = relgap sol.PrimalObjective = pcost sol.DualObjective = dcost sol.PrimalInfeasibility = pres sol.DualInfeasibility = dres sol.PrimalSlack = -ts sol.DualSlack = -tz return } // Compute initial scaling W: // // W * z = W^{-T} * s = lambda. // // lmbdasq = lambda o lambda if iters == 0 { W, _ = computeScaling(s, z, lmbda, dims, mnl) checkpnt.AddScaleVar(W) } ssqr(lmbdasq, lmbda, dims, mnl) checkpnt.Check("lmbdasq", 90) // f3(x, y, z) solves // // [ H A' GG'*W^{-1} ] [ ux ] [ bx ] // [ A 0 0 ] [ uy ] = [ by ]. // [ GG 0 -W' ] [ uz ] [ bz ] // // On entry, x, y, z contain bx, by, bz. // On exit, they contain ux, uy, uz. checkpnt.MinorPush(95) f3, err = kktsolver(W, x, z_mnl) checkpnt.MinorPop() checkpnt.Check("f3", 100) if err != nil { // ?? z_mnl is really copy of z[:mnl] ... should we copy here back to z?? singular_kkt_matrix := false if iters == 0 { err = errors.New("Rank(A) < p or Rank([H(x); A; Df(x); G] < n") return } else if relaxed_iters > 0 && relaxed_iters < MAX_RELAXED_ITERS { // The arithmetic error may be caused by a relaxed line // search in the previous iteration. Therefore we restore // the last saved state and require a standard line search. phi, gap = phi0, gap0 mu = gap / float64(mnl+dims.Sum("l", "s")+len(dims.At("q"))) blas.Copy(W0.At("dnl")[0], W.At("dnl")[0]) blas.Copy(W0.At("dnli")[0], W.At("dnli")[0]) blas.Copy(W0.At("d")[0], W.At("d")[0]) blas.Copy(W0.At("di")[0], W.At("di")[0]) blas.Copy(W0.At("beta")[0], W.At("beta")[0]) for k, _ := range dims.At("q") { blas.Copy(W0.At("v")[k], W.At("v")[k]) } for k, _ := range dims.At("s") { blas.Copy(W0.At("r")[k], W.At("r")[k]) blas.Copy(W0.At("rti")[k], W.At("rti")[k]) } //blas.Copy(x0, x) //x0.CopyTo(x) mCopy(x0, x) //blas.Copy(y0, y) mCopy(y0, y) blas.Copy(s0, s) blas.Copy(z0, z) blas.Copy(lmbda0, lmbda) blas.Copy(lmbdasq0, lmbdasq) // ??? //blas.Copy(rx0, rx) //rx0.CopyTo(rx) mCopy(rx0, rx) //blas.Copy(ry0, ry) mCopy(ry0, ry) //resx = math.Sqrt(blas.DotFloat(rx, rx)) resx = math.Sqrt(rx.Dot(rx)) blas.Copy(rznl0, rznl) blas.Copy(rzl0, rzl) resznl = blas.Nrm2Float(rznl) relaxed_iters = -1 // How about z_mnl here??? checkpnt.MinorPush(120) f3, err = kktsolver(W, x, z_mnl) checkpnt.MinorPop() if err != nil { singular_kkt_matrix = true } } else { singular_kkt_matrix = true } if singular_kkt_matrix { msg := "Terminated (singular KKT matrix)." if solopts.ShowProgress { fmt.Printf(msg + "\n") } zl := matrix.FloatVector(z.FloatArray()[mnl:]) sl := matrix.FloatVector(s.FloatArray()[mnl:]) ind := dims.Sum("l", "q") for _, m := range dims.At("s") { symm(sl, m, ind) symm(zl, m, ind) ind += m * m } ts, _ = maxStep(s, dims, mnl, nil) tz, _ = maxStep(z, dims, mnl, nil) err = errors.New(msg) sol.Status = Unknown sol.Result = sets.NewFloatSet("x", "y", "znl", "zl", "snl", "sl") sol.Result.Set("x", x.Matrix()) sol.Result.Set("y", y.Matrix()) sol.Result.Set("znl", matrix.FloatVector(z.FloatArray()[:mnl])) sol.Result.Set("zl", zl) sol.Result.Set("sl", sl) sol.Result.Set("snl", matrix.FloatVector(s.FloatArray()[:mnl])) sol.Gap = gap sol.RelativeGap = relgap sol.PrimalObjective = pcost sol.DualObjective = dcost sol.PrimalInfeasibility = pres sol.DualInfeasibility = dres sol.PrimalSlack = -ts sol.DualSlack = -tz return } } // f4_no_ir(x, y, z, s) solves // // [ 0 ] [ H A' GG' ] [ ux ] [ bx ] // [ 0 ] + [ A 0 0 ] [ uy ] = [ by ] // [ W'*us ] [ GG 0 0 ] [ W^{-1}*uz ] [ bz ] // // lmbda o (uz + us) = bs. // // On entry, x, y, z, x, contain bx, by, bz, bs. // On exit, they contain ux, uy, uz, us. if iters == 0 { ws3 = matrix.FloatZeros(mnl+cdim, 1) wz3 = matrix.FloatZeros(mnl+cdim, 1) checkpnt.AddMatrixVar("ws3", ws3) checkpnt.AddMatrixVar("wz3", wz3) } f4_no_ir := func(x, y MatrixVariable, z, s *matrix.FloatMatrix) (err error) { // Solve // // [ H A' GG' ] [ ux ] [ bx ] // [ A 0 0 ] [ uy ] = [ by ] // [ GG 0 -W'*W ] [ W^{-1}*uz ] [ bz - W'*(lmbda o\ bs) ] // // us = lmbda o\ bs - uz. err = nil // s := lmbda o\ s // = lmbda o\ bs sinv(s, lmbda, dims, mnl) // z := z - W'*s // = bz - W' * (lambda o\ bs) blas.Copy(s, ws3) scale(ws3, W, true, false) blas.AxpyFloat(ws3, z, -1.0) // Solve for ux, uy, uz err = f3(x, y, z) // s := s - z // = lambda o\ bs - z. blas.AxpyFloat(z, s, -1.0) return } if iters == 0 { wz2nl = matrix.FloatZeros(mnl, 1) wz2l = matrix.FloatZeros(cdim, 1) checkpnt.AddMatrixVar("wz2nl", wz2nl) checkpnt.AddMatrixVar("wz2l", wz2l) } res := func(ux, uy MatrixVariable, uz, us *matrix.FloatMatrix, vx, vy MatrixVariable, vz, vs *matrix.FloatMatrix) (err error) { // Evaluates residuals in Newton equations: // // [ vx ] [ 0 ] [ H A' GG' ] [ ux ] // [ vy ] -= [ 0 ] + [ A 0 0 ] [ uy ] // [ vz ] [ W'*us ] [ GG 0 0 ] [ W^{-1}*uz ] // // vs -= lmbda o (uz + us). err = nil minor := checkpnt.MinorTop() // vx := vx - H*ux - A'*uy - GG'*W^{-1}*uz fH(ux, vx, -1.0, 1.0) fA(uy, vx, -1.0, 1.0, la.OptTrans) blas.Copy(uz, wz3) scale(wz3, W, false, true) wz3_nl := matrix.FloatVector(wz3.FloatArray()[:mnl]) wz3_l := matrix.FloatVector(wz3.FloatArray()[mnl:]) fDf(&matrixVar{wz3_nl}, vx, -1.0, 1.0, la.OptTrans) fG(&matrixVar{wz3_l}, vx, -1.0, 1.0, la.OptTrans) checkpnt.Check("10res", minor+10) // vy := vy - A*ux fA(ux, vy, -1.0, 1.0, la.OptNoTrans) // vz := vz - W'*us - GG*ux err = fDf(ux, &matrixVar{wz2nl}, 1.0, 0.0, la.OptNoTrans) checkpnt.Check("15res", minor+10) blas.AxpyFloat(wz2nl, vz, -1.0) fG(ux, &matrixVar{wz2l}, 1.0, 0.0, la.OptNoTrans) checkpnt.Check("20res", minor+10) blas.AxpyFloat(wz2l, vz, -1.0, &la.IOpt{"offsety", mnl}) blas.Copy(us, ws3) scale(ws3, W, true, false) blas.AxpyFloat(ws3, vz, -1.0) checkpnt.Check("30res", minor+10) // vs -= lmbda o (uz + us) blas.Copy(us, ws3) blas.AxpyFloat(uz, ws3, 1.0) sprod(ws3, lmbda, dims, mnl, &la.SOpt{"diag", "D"}) blas.AxpyFloat(ws3, vs, -1.0) checkpnt.Check("90res", minor+10) return } // f4(x, y, z, s) solves the same system as f4_no_ir, but applies // iterative refinement. if iters == 0 { if refinement > 0 || solopts.Debug { wx = c.Copy() wy = b.Copy() wz = z.Copy() ws = s.Copy() checkpnt.AddVerifiable("wx", wx) checkpnt.AddMatrixVar("ws", ws) checkpnt.AddMatrixVar("wz", wz) } if refinement > 0 { wx2 = c.Copy() wy2 = b.Copy() wz2 = matrix.FloatZeros(mnl+cdim, 1) ws2 = matrix.FloatZeros(mnl+cdim, 1) checkpnt.AddVerifiable("wx2", wx2) checkpnt.AddMatrixVar("ws2", ws2) checkpnt.AddMatrixVar("wz2", wz2) } } f4 := func(x, y MatrixVariable, z, s *matrix.FloatMatrix) (err error) { if refinement > 0 || solopts.Debug { mCopy(x, wx) mCopy(y, wy) blas.Copy(z, wz) blas.Copy(s, ws) } minor := checkpnt.MinorTop() checkpnt.Check("0_f4", minor+100) checkpnt.MinorPush(minor + 100) err = f4_no_ir(x, y, z, s) checkpnt.MinorPop() checkpnt.Check("1_f4", minor+200) for i := 0; i < refinement; i++ { mCopy(wx, wx2) mCopy(wy, wy2) blas.Copy(wz, wz2) blas.Copy(ws, ws2) checkpnt.Check("2_f4", minor+(1+i)*200) checkpnt.MinorPush(minor + (1+i)*200) res(x, y, z, s, wx2, wy2, wz2, ws2) checkpnt.MinorPop() checkpnt.Check("3_f4", minor+(1+i)*200+100) err = f4_no_ir(wx2, wy2, wz2, ws2) checkpnt.MinorPop() checkpnt.Check("4_f4", minor+(1+i)*200+199) wx2.Axpy(x, 1.0) wy2.Axpy(y, 1.0) blas.AxpyFloat(wz2, z, 1.0) blas.AxpyFloat(ws2, s, 1.0) } if solopts.Debug { res(x, y, z, s, wx, wy, wz, ws) fmt.Printf("KKT residuals:\n") } return } sigma, eta = 0.0, 0.0 for i := 0; i < 2; i++ { minor := (i + 2) * 1000 checkpnt.MinorPush(minor) checkpnt.Check("loop01", minor) // Solve // // [ 0 ] [ H A' GG' ] [ dx ] // [ 0 ] + [ A 0 0 ] [ dy ] = -(1 - eta)*r // [ W'*ds ] [ GG 0 0 ] [ W^{-1}*dz ] // // lmbda o (dz + ds) = -lmbda o lmbda + sigma*mu*e. // mu = gap / float64(mnl+dims.Sum("l", "s")+len(dims.At("q"))) blas.ScalFloat(ds, 0.0) blas.AxpyFloat(lmbdasq, ds, -1.0, &la.IOpt{"n", mnl + dims.Sum("l", "q")}) ind = mnl + dims.At("l")[0] iset := matrix.MakeIndexSet(0, ind, 1) ds.Add(sigma*mu, iset...) for _, m := range dims.At("q") { ds.Add(sigma*mu, ind) ind += m } ind2 := ind for _, m := range dims.At("s") { blas.AxpyFloat(lmbdasq, ds, -1.0, &la.IOpt{"n", m}, &la.IOpt{"offsetx", ind2}, &la.IOpt{"offsety", ind}, &la.IOpt{"incy", m + 1}) ds.Add(sigma*mu, matrix.MakeIndexSet(ind, ind+m*m, m+1)...) ind += m * m ind2 += m } dx.Scal(0.0) rx.Axpy(dx, -1.0+eta) dy.Scal(0.0) ry.Axpy(dy, -1.0+eta) dz.Scale(0.0) blas.AxpyFloat(rznl, dz, -1.0+eta) blas.AxpyFloat(rzl, dz, -1.0+eta, &la.IOpt{"offsety", mnl}) //fmt.Printf("dx=\n%v\n", dx) //fmt.Printf("dz=\n%v\n", dz.ToString("%.7f")) //fmt.Printf("ds=\n%v\n", ds.ToString("%.7f")) checkpnt.Check("pref4", minor) checkpnt.MinorPush(minor) err = f4(dx, dy, dz, ds) if err != nil { if iters == 0 { s := fmt.Sprintf("Rank(A) < p or Rank([H(x); A; Df(x); G] < n (%s)", err) err = errors.New(s) return } msg := "Terminated (singular KKT matrix)." if solopts.ShowProgress { fmt.Printf(msg + "\n") } zl := matrix.FloatVector(z.FloatArray()[mnl:]) sl := matrix.FloatVector(s.FloatArray()[mnl:]) ind := dims.Sum("l", "q") for _, m := range dims.At("s") { symm(sl, m, ind) symm(zl, m, ind) ind += m * m } ts, _ = maxStep(s, dims, mnl, nil) tz, _ = maxStep(z, dims, mnl, nil) err = errors.New(msg) sol.Status = Unknown sol.Result = sets.NewFloatSet("x", "y", "znl", "zl", "snl", "sl") sol.Result.Set("x", x.Matrix()) sol.Result.Set("y", y.Matrix()) sol.Result.Set("znl", matrix.FloatVector(z.FloatArray()[:mnl])) sol.Result.Set("zl", zl) sol.Result.Set("sl", sl) sol.Result.Set("snl", matrix.FloatVector(s.FloatArray()[:mnl])) sol.Gap = gap sol.RelativeGap = relgap sol.PrimalObjective = pcost sol.DualObjective = dcost sol.PrimalInfeasibility = pres sol.DualInfeasibility = dres sol.PrimalSlack = -ts sol.DualSlack = -tz return } checkpnt.MinorPop() checkpnt.Check("postf4", minor+400) // Inner product ds'*dz and unscaled steps are needed in the // line search. dsdz = sdot(ds, dz, dims, mnl) blas.Copy(dz, dz2) scale(dz2, W, false, true) blas.Copy(ds, ds2) scale(ds2, W, true, false) checkpnt.Check("dsdz", minor+400) // Maximum steps to boundary. // // Also compute the eigenvalue decomposition of 's' blocks in // ds, dz. The eigenvectors Qs, Qz are stored in ds, dz. // The eigenvalues are stored in sigs, sigz. scale2(lmbda, ds, dims, mnl, false) ts, _ = maxStep(ds, dims, mnl, sigs) scale2(lmbda, dz, dims, mnl, false) tz, _ = maxStep(dz, dims, mnl, sigz) t := maxvec([]float64{0.0, ts, tz}) if t == 0 { step = 1.0 } else { step = math.Min(1.0, STEP/t) } checkpnt.Check("maxstep", minor+400) var newDf MatrixVarDf = nil var newf MatrixVariable = nil // Backtrack until newx is in domain of f. backtrack := true for backtrack { mCopy(x, newx) dx.Axpy(newx, step) newf, newDf, err = F.F1(newx) if newf != nil { backtrack = false } else { step *= BETA } } // Merit function // // phi = theta1 * gap + theta2 * norm(rx) + // theta3 * norm(rznl) // // and its directional derivative dphi. phi = theta1*gap + theta2*resx + theta3*resznl if i == 0 { dphi = -phi } else { dphi = -theta1*(1-sigma)*gap - theta2*(1-eta)*resx - theta3*(1-eta)*resznl } var newfDf func(x, y MatrixVariable, a, b float64, trans la.Option) error // Line search backtrack = true for backtrack { mCopy(x, newx) dx.Axpy(newx, step) mCopy(y, newy) dy.Axpy(newy, step) blas.Copy(z, newz) blas.AxpyFloat(dz2, newz, step) blas.Copy(s, news) blas.AxpyFloat(ds2, news, step) newf, newDf, err = F.F1(newx) newfDf = func(u, v MatrixVariable, a, b float64, trans la.Option) error { return newDf.Df(u, v, a, b, trans) } // newrx = c + A'*newy + newDf'*newz[:mnl] + G'*newz[mnl:] newz_mnl := matrix.FloatVector(newz.FloatArray()[:mnl]) newz_ml := matrix.FloatVector(newz.FloatArray()[mnl:]) //blas.Copy(c, newrx) //c.CopyTo(newrx) mCopy(c, newrx) fA(newy, newrx, 1.0, 1.0, la.OptTrans) newfDf(&matrixVar{newz_mnl}, newrx, 1.0, 1.0, la.OptTrans) fG(&matrixVar{newz_ml}, newrx, 1.0, 1.0, la.OptTrans) newresx = math.Sqrt(newrx.Dot(newrx)) // newrznl = news[:mnl] + newf news_mnl := matrix.FloatVector(news.FloatArray()[:mnl]) //news_ml := matrix.FloatVector(news.FloatArray()[mnl:]) blas.Copy(news_mnl, newrznl) blas.AxpyFloat(newf.Matrix(), newrznl, 1.0) newresznl = blas.Nrm2Float(newrznl) newgap = (1.0-(1.0-sigma)*step)*gap + step*step*dsdz newphi = theta1*newgap + theta2*newresx + theta3*newresznl if i == 0 { if newgap <= (1.0-ALPHA*step)*gap && (relaxed_iters > 0 && relaxed_iters < MAX_RELAXED_ITERS || newphi <= phi+ALPHA*step*dphi) { backtrack = false sigma = math.Min(newgap/gap, math.Pow((newgap/gap), EXPON)) //fmt.Printf("break 1: sigma=%.7f\n", sigma) eta = 0.0 } else { step *= BETA } } else { if relaxed_iters == -1 || (relaxed_iters == 0 && MAX_RELAXED_ITERS == 0) { // Do a standard line search. if newphi <= phi+ALPHA*step*dphi { relaxed_iters = 0 backtrack = false //fmt.Printf("break 2 : newphi=%.7f\n", newphi) } else { step *= BETA } } else if relaxed_iters == 0 && relaxed_iters < MAX_RELAXED_ITERS { if newphi <= phi+ALPHA*step*dphi { // Relaxed l.s. gives sufficient decrease. relaxed_iters = 0 } else { // Save state. phi0, dphi0, gap0 = phi, dphi, gap step0 = step blas.Copy(W.At("dnl")[0], W0.At("dnl")[0]) blas.Copy(W.At("dnli")[0], W0.At("dnli")[0]) blas.Copy(W.At("d")[0], W0.At("d")[0]) blas.Copy(W.At("di")[0], W0.At("di")[0]) blas.Copy(W.At("beta")[0], W0.At("beta")[0]) for k, _ := range dims.At("q") { blas.Copy(W.At("v")[k], W0.At("v")[k]) } for k, _ := range dims.At("s") { blas.Copy(W.At("r")[k], W0.At("r")[k]) blas.Copy(W.At("rti")[k], W0.At("rti")[k]) } mCopy(x, x0) mCopy(y, y0) mCopy(dx, dx0) mCopy(dy, dy0) blas.Copy(s, s0) blas.Copy(z, z0) blas.Copy(ds, ds0) blas.Copy(dz, dz0) blas.Copy(ds2, ds20) blas.Copy(dz2, dz20) blas.Copy(lmbda, lmbda0) blas.Copy(lmbdasq, lmbdasq0) // ??? mCopy(rx, rx0) mCopy(ry, ry0) blas.Copy(rznl, rznl0) blas.Copy(rzl, rzl0) dsdz0 = dsdz sigma0, eta0 = sigma, eta relaxed_iters = 1 } backtrack = false //fmt.Printf("break 3 : newphi=%.7f\n", newphi) } else if relaxed_iters >= 0 && relaxed_iters < MAX_RELAXED_ITERS && MAX_RELAXED_ITERS > 0 { if newphi <= phi0+ALPHA*step0*dphi0 { // Relaxed l.s. gives sufficient decrease. relaxed_iters = 0 } else { // Relaxed line search relaxed_iters += 1 } backtrack = false //fmt.Printf("break 4 : newphi=%.7f\n", newphi) } else if relaxed_iters == MAX_RELAXED_ITERS && MAX_RELAXED_ITERS > 0 { if newphi <= phi0+ALPHA*step0*dphi0 { // Series of relaxed line searches ends // with sufficient decrease w.r.t. phi0. backtrack = false relaxed_iters = 0 //fmt.Printf("break 5 : newphi=%.7f\n", newphi) } else if newphi >= phi0 { // Resume last saved line search phi, dphi, gap = phi0, dphi0, gap0 step = step0 blas.Copy(W0.At("dnl")[0], W.At("dnl")[0]) blas.Copy(W0.At("dnli")[0], W.At("dnli")[0]) blas.Copy(W0.At("d")[0], W.At("d")[0]) blas.Copy(W0.At("di")[0], W.At("di")[0]) blas.Copy(W0.At("beta")[0], W.At("beta")[0]) for k, _ := range dims.At("q") { blas.Copy(W0.At("v")[k], W.At("v")[k]) } for k, _ := range dims.At("s") { blas.Copy(W0.At("r")[k], W.At("r")[k]) blas.Copy(W0.At("rti")[k], W.At("rti")[k]) } mCopy(x, x0) mCopy(y, y0) mCopy(dx, dx0) mCopy(dy, dy0) blas.Copy(s, s0) blas.Copy(z, z0) blas.Copy(ds2, ds20) blas.Copy(dz2, dz20) blas.Copy(lmbda, lmbda0) blas.Copy(lmbdasq, lmbdasq0) // ??? mCopy(rx, rx0) mCopy(ry, ry0) blas.Copy(rznl, rznl0) blas.Copy(rzl, rzl0) dsdz = dsdz0 sigma, eta = sigma0, eta0 relaxed_iters = -1 } else if newphi <= phi+ALPHA*step*dphi { // Series of relaxed line searches ends // with sufficient decrease w.r.t. phi0. backtrack = false relaxed_iters = -1 //fmt.Printf("break 6 : newphi=%.7f\n", newphi) } } } } // end of line search checkpnt.Check("eol", minor+900) } // end for [0,1] // Update x, y dx.Axpy(x, step) dy.Axpy(y, step) checkpnt.Check("updatexy", 5000) // Replace nonlinear, 'l' and 'q' blocks of ds and dz with the // updated variables in the current scaling. // Replace 's' blocks of ds and dz with the factors Ls, Lz in a // factorization Ls*Ls', Lz*Lz' of the updated variables in the // current scaling. // ds := e + step*ds for nonlinear, 'l' and 'q' blocks. // dz := e + step*dz for nonlinear, 'l' and 'q' blocks. blas.ScalFloat(ds, step, &la.IOpt{"n", mnl + dims.Sum("l", "q")}) blas.ScalFloat(dz, step, &la.IOpt{"n", mnl + dims.Sum("l", "q")}) ind := mnl + dims.At("l")[0] is := matrix.MakeIndexSet(0, ind, 1) ds.Add(1.0, is...) dz.Add(1.0, is...) for _, m := range dims.At("q") { ds.SetIndex(ind, 1.0+ds.GetIndex(ind)) dz.SetIndex(ind, 1.0+dz.GetIndex(ind)) ind += m } checkpnt.Check("updatedsdz", 5100) // ds := H(lambda)^{-1/2} * ds and dz := H(lambda)^{-1/2} * dz. // // This replaces the 'l' and 'q' components of ds and dz with the // updated variables in the current scaling. // The 's' components of ds and dz are replaced with // // diag(lmbda_k)^{1/2} * Qs * diag(lmbda_k)^{1/2} // diag(lmbda_k)^{1/2} * Qz * diag(lmbda_k)^{1/2} scale2(lmbda, ds, dims, mnl, true) scale2(lmbda, dz, dims, mnl, true) checkpnt.Check("scale2", 5200) // sigs := ( e + step*sigs ) ./ lambda for 's' blocks. // sigz := ( e + step*sigz ) ./ lambda for 's' blocks. blas.ScalFloat(sigs, step) blas.ScalFloat(sigz, step) sigs.Add(1.0) sigz.Add(1.0) sdimsum := dims.Sum("s") qdimsum := dims.Sum("l", "q") blas.TbsvFloat(lmbda, sigs, &la.IOpt{"n", sdimsum}, &la.IOpt{"k", 0}, &la.IOpt{"lda", 1}, &la.IOpt{"offseta", mnl + qdimsum}) blas.TbsvFloat(lmbda, sigz, &la.IOpt{"n", sdimsum}, &la.IOpt{"k", 0}, &la.IOpt{"lda", 1}, &la.IOpt{"offseta", mnl + qdimsum}) checkpnt.Check("sigs", 5300) ind2 := mnl + qdimsum ind3 := 0 sdims := dims.At("s") for k := 0; k < len(sdims); k++ { m := sdims[k] for i := 0; i < m; i++ { a := math.Sqrt(sigs.GetIndex(ind3 + i)) blas.ScalFloat(ds, a, &la.IOpt{"offset", ind2 + m*i}, &la.IOpt{"n", m}) a = math.Sqrt(sigz.GetIndex(ind3 + i)) blas.ScalFloat(dz, a, &la.IOpt{"offset", ind2 + m*i}, &la.IOpt{"n", m}) } ind2 += m * m ind3 += m } checkpnt.Check("scaling", 5400) err = updateScaling(W, lmbda, ds, dz) checkpnt.Check("postscaling", 5500) // Unscale s, z, tau, kappa (unscaled variables are used only to // compute feasibility residuals). ind = mnl + dims.Sum("l", "q") ind2 = ind blas.Copy(lmbda, s, &la.IOpt{"n", ind}) for _, m := range dims.At("s") { blas.ScalFloat(s, 0.0, &la.IOpt{"offset", ind2}) blas.Copy(lmbda, s, &la.IOpt{"offsetx", ind}, &la.IOpt{"offsety", ind2}, &la.IOpt{"n", m}, &la.IOpt{"incy", m + 1}) ind += m ind2 += m * m } scale(s, W, true, false) checkpnt.Check("unscale_s", 5600) ind = mnl + dims.Sum("l", "q") ind2 = ind blas.Copy(lmbda, z, &la.IOpt{"n", ind}) for _, m := range dims.At("s") { blas.ScalFloat(z, 0.0, &la.IOpt{"offset", ind2}) blas.Copy(lmbda, z, &la.IOpt{"offsetx", ind}, &la.IOpt{"offsety", ind2}, &la.IOpt{"n", m}, &la.IOpt{"incy", m + 1}) ind += m ind2 += m * m } scale(z, W, false, true) checkpnt.Check("unscale_z", 5700) gap = blas.DotFloat(lmbda, lmbda) } return }