コード例 #1
0
ファイル: trees.go プロジェクト: 24hours/golearn
func main() {

	var tree base.Classifier

	rand.Seed(time.Now().UTC().UnixNano())

	// Load in the iris dataset
	iris, err := base.ParseCSVToInstances("../datasets/iris_headers.csv", true)
	if err != nil {
		panic(err)
	}

	// Discretise the iris dataset with Chi-Merge
	filt := filters.NewChiMergeFilter(iris, 0.99)
	filt.AddAllNumericAttributes()
	filt.Build()
	filt.Run(iris)

	// Create a 60-40 training-test split
	insts := base.InstancesTrainTestSplit(iris, 0.60)

	//
	// First up, use ID3
	//
	tree = trees.NewID3DecisionTree(0.6)
	// (Parameter controls train-prune split.)

	// Train the ID3 tree
	tree.Fit(insts[0])

	// Generate predictions
	predictions := tree.Predict(insts[1])

	// Evaluate
	fmt.Println("ID3 Performance")
	cf := eval.GetConfusionMatrix(insts[1], predictions)
	fmt.Println(eval.GetSummary(cf))

	//
	// Next up, Random Trees
	//

	// Consider two randomly-chosen attributes
	tree = trees.NewRandomTree(2)
	tree.Fit(insts[0])
	predictions = tree.Predict(insts[1])
	fmt.Println("RandomTree Performance")
	cf = eval.GetConfusionMatrix(insts[1], predictions)
	fmt.Println(eval.GetSummary(cf))

	//
	// Finally, Random Forests
	//
	tree = ensemble.NewRandomForest(100, 3)
	tree.Fit(insts[0])
	predictions = tree.Predict(insts[1])
	fmt.Println("RandomForest Performance")
	cf = eval.GetConfusionMatrix(insts[1], predictions)
	fmt.Println(eval.GetSummary(cf))
}
コード例 #2
0
ファイル: ml1.go プロジェクト: raghavkgarg/gotutorial
func main() {
	// Load in a dataset, with headers. Header attributes will be stored.
	// Think of instances as a Data Frame structure in R or Pandas.
	// You can also create instances from scratch.
	rawData, err := base.ParseCSVToInstances("datasets/iris.csv", false)
	if err != nil {
		panic(err)
	}

	// Print a pleasant summary of your data.
	fmt.Println(rawData)

	//Initialises a new KNN classifier
	cls := knn.NewKnnClassifier("euclidean", 2)

	//Do a training-test split
	trainData, testData := base.InstancesTrainTestSplit(rawData, 0.50)
	cls.Fit(trainData)

	//Calculates the Euclidean distance and returns the most popular label
	predictions := cls.Predict(testData)
	fmt.Println(predictions)

	// Prints precision/recall metrics
	confusionMat, err := evaluation.GetConfusionMatrix(testData, predictions)
	if err != nil {
		panic(fmt.Sprintf("Unable to get confusion matrix: %s", err.Error()))
	}
	fmt.Println(evaluation.GetSummary(confusionMat))
}
コード例 #3
0
ファイル: bagging_test.go プロジェクト: Gudym/golearn
func TestRandomForest1(testEnv *testing.T) {
	inst, err := base.ParseCSVToInstances("../examples/datasets/iris_headers.csv", true)
	if err != nil {
		panic(err)
	}

	rand.Seed(time.Now().UnixNano())
	trainData, testData := base.InstancesTrainTestSplit(inst, 0.6)
	filt := filters.NewChiMergeFilter(inst, 0.90)
	for _, a := range base.NonClassFloatAttributes(inst) {
		filt.AddAttribute(a)
	}
	filt.Train()
	trainDataf := base.NewLazilyFilteredInstances(trainData, filt)
	testDataf := base.NewLazilyFilteredInstances(testData, filt)
	rf := new(BaggedModel)
	for i := 0; i < 10; i++ {
		rf.AddModel(trees.NewRandomTree(2))
	}
	rf.Fit(trainDataf)
	fmt.Println(rf)
	predictions := rf.Predict(testDataf)
	fmt.Println(predictions)
	confusionMat := eval.GetConfusionMatrix(testDataf, predictions)
	fmt.Println(confusionMat)
	fmt.Println(eval.GetMacroPrecision(confusionMat))
	fmt.Println(eval.GetMacroRecall(confusionMat))
	fmt.Println(eval.GetSummary(confusionMat))
}
コード例 #4
0
ファイル: bagging_test.go プロジェクト: 24hours/golearn
func TestRandomForest1(testEnv *testing.T) {
	inst, err := base.ParseCSVToInstances("../examples/datasets/iris_headers.csv", true)
	if err != nil {
		panic(err)
	}

	rand.Seed(time.Now().UnixNano())
	insts := base.InstancesTrainTestSplit(inst, 0.6)
	filt := filters.NewChiMergeFilter(inst, 0.90)
	filt.AddAllNumericAttributes()
	filt.Build()
	filt.Run(insts[1])
	filt.Run(insts[0])
	rf := new(BaggedModel)
	for i := 0; i < 10; i++ {
		rf.AddModel(trees.NewRandomTree(2))
	}
	rf.Fit(insts[0])
	fmt.Println(rf)
	predictions := rf.Predict(insts[1])
	fmt.Println(predictions)
	confusionMat := eval.GetConfusionMatrix(insts[1], predictions)
	fmt.Println(confusionMat)
	fmt.Println(eval.GetMacroPrecision(confusionMat))
	fmt.Println(eval.GetMacroRecall(confusionMat))
	fmt.Println(eval.GetSummary(confusionMat))
}
コード例 #5
0
ファイル: tree_test.go プロジェクト: hsinhoyeh/golearn
func TestPruning(testEnv *testing.T) {
	inst, err := base.ParseCSVToInstances("../examples/datasets/iris_headers.csv", true)
	if err != nil {
		panic(err)
	}
	trainData, testData := base.InstancesTrainTestSplit(inst, 0.6)
	filt := filters.NewChiMergeFilter(inst, 0.90)
	filt.AddAllNumericAttributes()
	filt.Build()
	fmt.Println(testData)
	filt.Run(testData)
	filt.Run(trainData)
	root := NewRandomTree(2)
	fittrainData, fittestData := base.InstancesTrainTestSplit(trainData, 0.6)
	root.Fit(fittrainData)
	root.Prune(fittestData)
	fmt.Println(root)
	predictions := root.Predict(testData)
	fmt.Println(predictions)
	confusionMat := eval.GetConfusionMatrix(testData, predictions)
	fmt.Println(confusionMat)
	fmt.Println(eval.GetMacroPrecision(confusionMat))
	fmt.Println(eval.GetMacroRecall(confusionMat))
	fmt.Println(eval.GetSummary(confusionMat))
}
コード例 #6
0
ファイル: average_test.go プロジェクト: CTLife/golearn
func TestPredict(t *testing.T) {

	a := NewAveragePerceptron(10, 1.2, 0.5, 0.3)

	if a == nil {

		t.Errorf("Unable to create average perceptron")
	}

	absPath, _ := filepath.Abs("../examples/datasets/house-votes-84.csv")
	rawData, err := base.ParseCSVToInstances(absPath, true)
	if err != nil {
		t.Fail()
	}

	trainData, testData := base.InstancesTrainTestSplit(rawData, 0.5)
	a.Fit(trainData)

	if a.trained == false {
		t.Errorf("Perceptron was not trained")
	}

	predictions := a.Predict(testData)
	cf, err := evaluation.GetConfusionMatrix(testData, predictions)
	if err != nil {
		t.Errorf("Couldn't get confusion matrix: %s", err)
		t.Fail()
	}
	fmt.Println(evaluation.GetSummary(cf))
	fmt.Println(trainData)
	fmt.Println(testData)
	if evaluation.GetAccuracy(cf) < 0.65 {
		t.Errorf("Perceptron not trained correctly")
	}
}
コード例 #7
0
ファイル: knn_bench_test.go プロジェクト: CTLife/golearn
func BenchmarkKNNWithNoOpts(b *testing.B) {
	// Load
	train, test := readMnist()
	cls := NewKnnClassifier("euclidean", 1)
	cls.AllowOptimisations = false
	cls.Fit(train)
	predictions := cls.Predict(test)
	c, err := evaluation.GetConfusionMatrix(test, predictions)
	if err != nil {
		panic(err)
	}
	fmt.Println(evaluation.GetSummary(c))
	fmt.Println(evaluation.GetAccuracy(c))
}
コード例 #8
0
func main() {
	data, err := base.ParseCSVToInstances("iris_headers.csv", true)
	if err != nil {
		panic(err)
	}

	cls := knn.NewKnnClassifier("euclidean", 2)

	trainData, testData := base.InstancesTrainTestSplit(data, 0.8)
	cls.Fit(trainData)

	predictions := cls.Predict(testData)
	fmt.Println(predictions)

	confusionMat := evaluation.GetConfusionMatrix(testData, predictions)
	fmt.Println(evaluation.GetSummary(confusionMat))
}
コード例 #9
0
ファイル: knn.go プロジェクト: postfix/education
func NewTestTrial(filename string, split float64) bool {
	cls := knn.NewKnnClassifier("euclidean", 2)
	data := CSVtoKNNData(filename)
	train, test := base.InstancesTrainTestSplit(data, split)

	cls.Fit(train)
	//Calculates the Euclidean distance and returns the most popular label
	predictions := cls.Predict(test)
	fmt.Println(predictions)

	confusionMat, err := evaluation.GetConfusionMatrix(test, predictions)
	if err != nil {
		panic(fmt.Sprintf("Unable to get confusion matrix: %s", err.Error()))
	}
	fmt.Println(evaluation.GetSummary(confusionMat))

	return true
}
コード例 #10
0
func TestRandomForest1(testEnv *testing.T) {
	inst, err := base.ParseCSVToInstances("../examples/datasets/iris_headers.csv", true)
	if err != nil {
		panic(err)
	}
	trainData, testData := base.InstancesTrainTestSplit(inst, 0.60)
	filt := filters.NewChiMergeFilter(trainData, 0.90)
	filt.AddAllNumericAttributes()
	filt.Build()
	filt.Run(testData)
	filt.Run(trainData)
	rf := NewRandomForest(10, 3)
	rf.Fit(trainData)
	predictions := rf.Predict(testData)
	fmt.Println(predictions)
	confusionMat := eval.GetConfusionMatrix(testData, predictions)
	fmt.Println(confusionMat)
	fmt.Println(eval.GetSummary(confusionMat))
}
コード例 #11
0
func main() {
	rawData, err := base.ParseCSVToInstances("../datasets/iris_headers.csv", true)
	if err != nil {
		panic(err)
	}

	//Initialises a new KNN classifier
	cls := knn.NewKnnClassifier("euclidean", 2)

	//Do a training-test split
	trainData, testData := base.InstancesTrainTestSplit(rawData, 0.50)
	cls.Fit(trainData)

	//Calculates the Euclidean distance and returns the most popular label
	predictions := cls.Predict(testData)
	fmt.Println(predictions)

	// Prints precision/recall metrics
	confusionMat := evaluation.GetConfusionMatrix(testData, predictions)
	fmt.Println(evaluation.GetSummary(confusionMat))
}
コード例 #12
0
func main() {
	// Load and parse the data from csv files
	fmt.Println("Loading data...")
	trainData, err := base.ParseCSVToInstances("data/mnist_train.csv", true)
	if err != nil {
		panic(err)
	}
	testData, err := base.ParseCSVToInstances("data/mnist_test.csv", true)
	if err != nil {
		panic(err)
	}

	// Create a new linear SVC with some good default values
	classifier, err := linear_models.NewLinearSVC("l1", "l2", true, 1.0, 1e-4)
	if err != nil {
		panic(err)
	}

	// Don't output information on each iteration
	base.Silent()

	// Train the linear SVC
	fmt.Println("Training...")
	classifier.Fit(trainData)

	// Make predictions for the test data
	fmt.Println("Predicting...")
	predictions, err := classifier.Predict(testData)
	if err != nil {
		panic(err)
	}

	// Get a confusion matrix and print out some accuracy stats for our predictions
	confusionMat, err := evaluation.GetConfusionMatrix(testData, predictions)
	if err != nil {
		panic(fmt.Sprintf("Unable to get confusion matrix: %s", err.Error()))
	}
	fmt.Println(evaluation.GetSummary(confusionMat))
}
コード例 #13
0
ファイル: one_v_all_test.go プロジェクト: CTLife/golearn
func TestOneVsAllModel(t *testing.T) {

	classifierFunc := func(c string) base.Classifier {
		m, err := linear_models.NewLinearSVC("l1", "l2", true, 1.0, 1e-4)
		if err != nil {
			panic(err)
		}
		return m
	}

	Convey("Given data", t, func() {
		inst, err := base.ParseCSVToInstances("../examples/datasets/iris_headers.csv", true)
		So(err, ShouldBeNil)

		X, Y := base.InstancesTrainTestSplit(inst, 0.4)

		m := NewOneVsAllModel(classifierFunc)
		m.Fit(X)

		Convey("The maximum class index should be 2", func() {
			So(m.maxClassVal, ShouldEqual, 2)
		})

		Convey("There should be three of everything...", func() {
			So(len(m.filters), ShouldEqual, 3)
			So(len(m.classifiers), ShouldEqual, 3)
		})

		Convey("Predictions should work...", func() {
			predictions, err := m.Predict(Y)
			So(err, ShouldEqual, nil)
			cf, err := evaluation.GetConfusionMatrix(Y, predictions)
			So(err, ShouldEqual, nil)
			fmt.Println(evaluation.GetAccuracy(cf))
			fmt.Println(evaluation.GetSummary(cf))
		})
	})
}
コード例 #14
0
ファイル: tree_test.go プロジェクト: 24hours/golearn
func TestRandomTreeClassification2(testEnv *testing.T) {
	inst, err := base.ParseCSVToInstances("../examples/datasets/iris_headers.csv", true)
	if err != nil {
		panic(err)
	}
	insts := base.InstancesTrainTestSplit(inst, 0.4)
	filt := filters.NewChiMergeFilter(inst, 0.90)
	filt.AddAllNumericAttributes()
	filt.Build()
	fmt.Println(insts[1])
	filt.Run(insts[1])
	filt.Run(insts[0])
	root := NewRandomTree(2)
	root.Fit(insts[0])
	fmt.Println(root)
	predictions := root.Predict(insts[1])
	fmt.Println(predictions)
	confusionMat := eval.GetConfusionMatrix(insts[1], predictions)
	fmt.Println(confusionMat)
	fmt.Println(eval.GetMacroPrecision(confusionMat))
	fmt.Println(eval.GetMacroRecall(confusionMat))
	fmt.Println(eval.GetSummary(confusionMat))
}
コード例 #15
0
ファイル: randomforest_test.go プロジェクト: JacobXie/golearn
func TestRandomForest1(testEnv *testing.T) {
	inst, err := base.ParseCSVToInstances("../examples/datasets/iris_headers.csv", true)
	if err != nil {
		panic(err)
	}

	filt := filters.NewChiMergeFilter(inst, 0.90)
	for _, a := range base.NonClassFloatAttributes(inst) {
		filt.AddAttribute(a)
	}
	filt.Train()
	instf := base.NewLazilyFilteredInstances(inst, filt)

	trainData, testData := base.InstancesTrainTestSplit(instf, 0.60)

	rf := NewRandomForest(10, 3)
	rf.Fit(trainData)
	predictions := rf.Predict(testData)
	fmt.Println(predictions)
	confusionMat := eval.GetConfusionMatrix(testData, predictions)
	fmt.Println(confusionMat)
	fmt.Println(eval.GetSummary(confusionMat))
}
コード例 #16
0
ファイル: tree_test.go プロジェクト: hsinhoyeh/golearn
func TestID3Classification(testEnv *testing.T) {
	inst, err := base.ParseCSVToInstances("../examples/datasets/iris_headers.csv", true)
	if err != nil {
		panic(err)
	}
	filt := filters.NewBinningFilter(inst, 10)
	filt.AddAllNumericAttributes()
	filt.Build()
	filt.Run(inst)
	fmt.Println(inst)
	trainData, testData := base.InstancesTrainTestSplit(inst, 0.70)
	// Build the decision tree
	rule := new(InformationGainRuleGenerator)
	root := InferID3Tree(trainData, rule)
	fmt.Println(root)
	predictions := root.Predict(testData)
	fmt.Println(predictions)
	confusionMat := eval.GetConfusionMatrix(testData, predictions)
	fmt.Println(confusionMat)
	fmt.Println(eval.GetMacroPrecision(confusionMat))
	fmt.Println(eval.GetMacroRecall(confusionMat))
	fmt.Println(eval.GetSummary(confusionMat))
}
コード例 #17
0
func main() {

	rand.Seed(4402201)

	rawData, err := base.ParseCSVToInstances("../datasets/house-votes-84.csv", true)
	if err != nil {
		panic(err)
	}

	//Initialises a new AveragePerceptron classifier
	cls := perceptron.NewAveragePerceptron(10, 1.2, 0.5, 0.3)

	//Do a training-test split
	trainData, testData := base.InstancesTrainTestSplit(rawData, 0.50)
	fmt.Println(trainData)
	fmt.Println(testData)
	cls.Fit(trainData)

	predictions := cls.Predict(testData)

	// Prints precision/recall metrics
	confusionMat, _ := evaluation.GetConfusionMatrix(testData, predictions)
	fmt.Println(evaluation.GetSummary(confusionMat))
}
コード例 #18
0
ファイル: tree_test.go プロジェクト: hsinhoyeh/golearn
func TestRandomTreeClassification(testEnv *testing.T) {
	inst, err := base.ParseCSVToInstances("../examples/datasets/iris_headers.csv", true)
	if err != nil {
		panic(err)
	}
	trainData, testData := base.InstancesTrainTestSplit(inst, 0.6)
	filt := filters.NewChiMergeFilter(inst, 0.90)
	filt.AddAllNumericAttributes()
	filt.Build()
	filt.Run(trainData)
	filt.Run(testData)
	fmt.Println(inst)
	r := new(RandomTreeRuleGenerator)
	r.Attributes = 2
	root := InferID3Tree(trainData, r)
	fmt.Println(root)
	predictions := root.Predict(testData)
	fmt.Println(predictions)
	confusionMat := eval.GetConfusionMatrix(testData, predictions)
	fmt.Println(confusionMat)
	fmt.Println(eval.GetMacroPrecision(confusionMat))
	fmt.Println(eval.GetMacroRecall(confusionMat))
	fmt.Println(eval.GetSummary(confusionMat))
}
コード例 #19
0
ファイル: trees.go プロジェクト: CTLife/golearn
func main() {

	var tree base.Classifier

	rand.Seed(44111342)

	// Load in the iris dataset
	iris, err := base.ParseCSVToInstances("../datasets/iris_headers.csv", true)
	if err != nil {
		panic(err)
	}

	// Discretise the iris dataset with Chi-Merge
	filt := filters.NewChiMergeFilter(iris, 0.999)
	for _, a := range base.NonClassFloatAttributes(iris) {
		filt.AddAttribute(a)
	}
	filt.Train()
	irisf := base.NewLazilyFilteredInstances(iris, filt)

	// Create a 60-40 training-test split
	trainData, testData := base.InstancesTrainTestSplit(irisf, 0.60)

	//
	// First up, use ID3
	//
	tree = trees.NewID3DecisionTree(0.6)
	// (Parameter controls train-prune split.)

	// Train the ID3 tree
	err = tree.Fit(trainData)
	if err != nil {
		panic(err)
	}

	// Generate predictions
	predictions, err := tree.Predict(testData)
	if err != nil {
		panic(err)
	}

	// Evaluate
	fmt.Println("ID3 Performance (information gain)")
	cf, err := evaluation.GetConfusionMatrix(testData, predictions)
	if err != nil {
		panic(fmt.Sprintf("Unable to get confusion matrix: %s", err.Error()))
	}
	fmt.Println(evaluation.GetSummary(cf))

	tree = trees.NewID3DecisionTreeFromRule(0.6, new(trees.InformationGainRatioRuleGenerator))
	// (Parameter controls train-prune split.)

	// Train the ID3 tree
	err = tree.Fit(trainData)
	if err != nil {
		panic(err)
	}

	// Generate predictions
	predictions, err = tree.Predict(testData)
	if err != nil {
		panic(err)
	}

	// Evaluate
	fmt.Println("ID3 Performance (information gain ratio)")
	cf, err = evaluation.GetConfusionMatrix(testData, predictions)
	if err != nil {
		panic(fmt.Sprintf("Unable to get confusion matrix: %s", err.Error()))
	}
	fmt.Println(evaluation.GetSummary(cf))

	tree = trees.NewID3DecisionTreeFromRule(0.6, new(trees.GiniCoefficientRuleGenerator))
	// (Parameter controls train-prune split.)

	// Train the ID3 tree
	err = tree.Fit(trainData)
	if err != nil {
		panic(err)
	}

	// Generate predictions
	predictions, err = tree.Predict(testData)
	if err != nil {
		panic(err)
	}

	// Evaluate
	fmt.Println("ID3 Performance (gini index generator)")
	cf, err = evaluation.GetConfusionMatrix(testData, predictions)
	if err != nil {
		panic(fmt.Sprintf("Unable to get confusion matrix: %s", err.Error()))
	}
	fmt.Println(evaluation.GetSummary(cf))
	//
	// Next up, Random Trees
	//

	// Consider two randomly-chosen attributes
	tree = trees.NewRandomTree(2)
	err = tree.Fit(testData)
	if err != nil {
		panic(err)
	}
	predictions, err = tree.Predict(testData)
	if err != nil {
		panic(err)
	}
	fmt.Println("RandomTree Performance")
	cf, err = evaluation.GetConfusionMatrix(testData, predictions)
	if err != nil {
		panic(fmt.Sprintf("Unable to get confusion matrix: %s", err.Error()))
	}
	fmt.Println(evaluation.GetSummary(cf))

	//
	// Finally, Random Forests
	//
	tree = ensemble.NewRandomForest(70, 3)
	err = tree.Fit(trainData)
	if err != nil {
		panic(err)
	}
	predictions, err = tree.Predict(testData)
	if err != nil {
		panic(err)
	}
	fmt.Println("RandomForest Performance")
	cf, err = evaluation.GetConfusionMatrix(testData, predictions)
	if err != nil {
		panic(fmt.Sprintf("Unable to get confusion matrix: %s", err.Error()))
	}
	fmt.Println(evaluation.GetSummary(cf))
}