nodeml
Version:
node.js machine learning package
57 lines (46 loc) • 1.78 kB
JavaScript
;
let kmeans = ()=> {
const {evaluate, kMeans, sample} = require('../index');
const dataset = sample.yeast();
let kmeans = new kMeans();
kmeans.train(dataset.dataset, { labels: dataset.labels });
let result = kmeans.test(dataset.dataset);
let evaluation = evaluate.accuracy(dataset.labels, result);
console.log('k-Means', Math.round(evaluation.micro.PRECISION * 10000) / 100);
};
let cnn = () => {
const {evaluate, CNN, sample} = require('../index');
const bulk = sample.yeast();
let cnn = new CNN();
cnn.configure({learning_rate: 0.1, momentum: 0.001, batch_size: 1, l2_decay: 0.0001});
let layer = [];
layer.push({type: 'input', out_sx: 1, out_sy: 1, out_depth: 8});
layer.push({type: 'svm', num_classes: 10});
cnn.makeLayer(layer);
cnn.train(bulk.dataset, bulk.labels);
let result = cnn.test(bulk.dataset);
let evaluation = evaluate.accuracy(bulk.labels, result);
console.log('CNN', Math.round(evaluation.micro.PRECISION * 10000) / 100);
};
let knn = () => {
const {evaluate, kNN, sample} = require('../index');
let knn = new kNN();
const bulk = sample.yeast();
knn.train(bulk.dataset, bulk.labels);
let result = knn.test(bulk.dataset, 5);
let evaluation = evaluate.accuracy(bulk.labels, result);
console.log('kNN', Math.round(evaluation.micro.PRECISION * 10000) / 100);
};
let bayes = () => {
const {evaluate, Bayes, sample} = require('../index');
bayes = new Bayes();
const bulk = sample.yeast();
bayes.train(bulk.dataset, bulk.labels);
let result = bayes.test(bulk.dataset);
let evaluation = evaluate.accuracy(bulk.labels, result);
console.log('bayes', Math.round(evaluation.micro.PRECISION * 10000) / 100);
};
bayes();
cnn();
knn();
kmeans();