knn

package
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Published: Sep 28, 2014 License: MIT Imports: 4 Imported by: 0

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Overview

Package knn implements a K Nearest Neighbors object, capable of both classification and regression. It accepts data in the form of a slice of float64s, which are then reshaped into a X by Y matrix.

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Variables

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Functions

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Types

type KNNClassifier

type KNNClassifier struct {
	base.BaseEstimator
	TrainingData      base.FixedDataGrid
	DistanceFunc      string
	NearestNeighbours int
}

A KNNClassifier consists of a data matrix, associated labels in the same order as the matrix, and a distance function. The accepted distance functions at this time are 'euclidean' and 'manhattan'.

func NewKnnClassifier

func NewKnnClassifier(distfunc string, neighbours int) *KNNClassifier

NewKnnClassifier returns a new classifier

func (*KNNClassifier) Fit

func (KNN *KNNClassifier) Fit(trainingData base.FixedDataGrid)

Fit stores the training data for later

func (*KNNClassifier) Predict

func (KNN *KNNClassifier) Predict(what base.FixedDataGrid) base.FixedDataGrid

Predict returns a classification for the vector, based on a vector input, using the KNN algorithm.

type KNNRegressor

type KNNRegressor struct {
	base.BaseEstimator
	Values       []float64
	DistanceFunc string
}

A KNNRegressor consists of a data matrix, associated result variables in the same order as the matrix, and a name.

func NewKnnRegressor

func NewKnnRegressor(distfunc string) *KNNRegressor

NewKnnRegressor mints a new classifier.

func (*KNNRegressor) Fit

func (KNN *KNNRegressor) Fit(values []float64, numbers []float64, rows int, cols int)

func (*KNNRegressor) Predict

func (KNN *KNNRegressor) Predict(vector *mat64.Dense, K int) float64

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