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GoLearn
GoLearn is a 'batteries included' machine learning library for Go. Simplicity, paired with customisability, is the goal. We are in active development, and would love comments from users out in the wild. Drop us a line on Twitter.
twitter: @golearn_ml
Install
go get github.com/sjwhitworth/golearn
cd src/github.com/sjwhitworth/golearn
go get ./...
Getting Started
Data are loaded in as Instances. You can then perform matrix like operations on them, and pass them to estimators. GoLearn implements the scikit-learn interface of Fit/Predict, so you can easily swap out estimators for trial and error. GoLearn also includes helper functions for data, like cross validation, and train and test splitting.
// 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.
data, err := base.ParseCSVToInstances("datasets/iris_headers.csv", true)
// Print a pleasant summary of your data.
fmt.Println(data)
// Split your dataframe into a training set, and a test set, with an 80/20 proportion.
trainTest := base.InstancesTrainTestSplit(rawData, 0.8)
trainData := trainTest[0]
testData := trainTest[1]
// Instantiate a new KNN classifier. Euclidean distance, with 2 neighbours.
cls := knn.NewKnnClassifier("euclidean", 2)
// Fit it on your training data.
cls.Fit(trainData)
// Get your predictions against test instances.
predictions := cls.Predict(testData)
// Print a confusion matrix with precision and recall metrics.
confusionMat := evaluation.GetConfusionMatrix(testData, predictions)
fmt.Println(evaluation.GetSummary(confusionMat))
Iris-virginica 28 2 56 0.9333 0.9333 0.9333
Iris-setosa 29 0 59 1.0000 1.0000 1.0000
Iris-versicolor 27 2 57 0.9310 0.9310 0.9310
Overall accuracy: 0.9545
Examples
GoLearn comes with practical examples. Dive in and see what is going on.
cd examples/
go run knnclassifier_iris.go
go run instances.go
Join the team
Please send me a mail at stephen dot whitworth at hailocab dot com.
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