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perceptron

v0.0.1

Published

A simple perceptron written in Javascript

Downloads

5

Readme

Perceptron.

This is an implementation of the perceptron learning algorithm for node.js.

Installing it.

npm install perceptron

Using it.

Let's teach a perceptron to implement a boolean AND function:

var perceptron = require('perceptron')

var and = perceptron()

and.train([1, 1], 1)
and.train([0, 1], 0)
and.train([1, 0], 0)
and.train([0, 0], 0)

// practice makes perfect (we hope...)
while(!and.retrain()) {}

and.perceive([1, 1]) // => 1
and.perceive([0, 1]) // => 0
and.perceive([1, 0]) // => 0
and.perceive([0, 0]) // => 0

The perceptron starts with random weights if you don't provide any defaults. Weights are adjusted according to the delta rule each time you call train and the current weights give the wrong answer. Since this adjustment can cause the perceptron to 'unlearn' previously learned inputs, retrain iterates over all previous inputs, calling train again. Both train and retrain return a boolean success value, indicating if the input(s) were learned.