bayesian

Naive Bayesian Classification for Golang.

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Naive Bayesian Classification

Perform naive Bayesian classification into an arbitrary number of classes on sets of strings. bayesian also supports term frequency-inverse document frequency calculations (TF-IDF).

Copyright (c) 2011-2017. Jake Brukhman. (jbrukh@gmail.com).
All rights reserved. See the LICENSE file for BSD-style license.


Background

This is meant to be an low-entry barrier Go library for basic Bayesian classification. See code comments for a refresher on naive Bayesian classifiers, and please take some time to understand underflow edge cases as this otherwise may result in innacurate classifications.


Installation

Using the go command:

go get github.com/jbrukh/bayesian
go install !$

Documentation

See the GoPkgDoc documentation here.


Features

  • Conditional probability and "log-likelihood"-like scoring.
  • Underflow detection.
  • Simple persistence of classifiers.
  • Statistics.
  • TF-IDF support.

Example 1 (Simple Classification)

To use the classifier, first you must create some classes
and train it:

import . "bayesian"

const (
    Good Class = "Good"
    Bad Class = "Bad"
)

classifier := NewClassifier(Good, Bad)
goodStuff := []string{"tall", "rich", "handsome"}
badStuff  := []string{"poor", "smelly", "ugly"}
classifier.Learn(goodStuff, Good)
classifier.Learn(badStuff,  Bad)

Then you can ascertain the scores of each class and
the most likely class your data belongs to:

scores, likely, _ := classifier.LogScores(
                        []string{"tall", "girl"}
                     )

Magnitude of the score indicates likelihood. Alternatively (but
with some risk of float underflow), you can obtain actual probabilities:

probs, likely, _ := classifier.ProbScores(
                        []string{"tall", "girl"}
                     )

Example 2 (TF-IDF Support)

To use the TF-IDF classifier, first you must create some classes
and train it and you need to call ConvertTermsFreqToTfIdf() AFTER training
and before calling classification methods such as LogScores, SafeProbScores, and ProbScores)

import . "bayesian"

const (
    Good Class = "Good"
    Bad Class = "Bad"
)

// Create a classifier with TF-IDF support.
classifier := NewClassifierTfIdf(Good, Bad)

goodStuff := []string{"tall", "rich", "handsome"}
badStuff  := []string{"poor", "smelly", "ugly"}

classifier.Learn(goodStuff, Good)
classifier.Learn(badStuff,  Bad)

// Required
classifier.ConvertTermsFreqToTfIdf()

Then you can ascertain the scores of each class and
the most likely class your data belongs to:

scores, likely, _ := classifier.LogScores(
                        []string{"tall", "girl"}
                     )

Magnitude of the score indicates likelihood. Alternatively (but
with some risk of float underflow), you can obtain actual probabilities:

probs, likely, _ := classifier.ProbScores(
                        []string{"tall", "girl"}
                     )

Use wisely.

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名称与所有者jbrukh/bayesian
主编程语言Go
编程语言Go (语言数: 1)
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创建于2011-11-23 04:17:00
推送于2023-11-17 14:32:45
最后一次提交2023-11-17 09:32:45
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最新版本名称1.0 (发布于 )
第一版名称0.9 (发布于 )
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