npm package discovery and stats viewer.

Discover Tips

  • General search

    [free text search, go nuts!]

  • Package details

    pkg:[package-name]

  • User packages

    @[username]

Sponsor

Optimize Toolset

I’ve always been into building performant and accessible sites, but lately I’ve been taking it extremely seriously. So much so that I’ve been building a tool to help me optimize and monitor the sites that I build to make sure that I’m making an attempt to offer the best experience to those who visit them. If you’re into performant, accessible and SEO friendly sites, you might like it too! You can check it out at Optimize Toolset.

About

Hi, 👋, I’m Ryan Hefner  and I built this site for me, and you! The goal of this site was to provide an easy way for me to check the stats on my npm packages, both for prioritizing issues and updates, and to give me a little kick in the pants to keep up on stuff.

As I was building it, I realized that I was actually using the tool to build the tool, and figured I might as well put this out there and hopefully others will find it to be a fast and useful way to search and browse npm packages as I have.

If you’re interested in other things I’m working on, follow me on Twitter or check out the open source projects I’ve been publishing on GitHub.

I am also working on a Twitter bot for this site to tweet the most popular, newest, random packages from npm. Please follow that account now and it will start sending out packages soon–ish.

Open Software & Tools

This site wouldn’t be possible without the immense generosity and tireless efforts from the people who make contributions to the world and share their work via open source initiatives. Thank you 🙏

© 2024 – Pkg Stats / Ryan Hefner

ml-isolation-forest

v0.1.0

Published

Find anomalies in a set of data using the isolation forest algorithm

Downloads

9

Readme

isolation-forest

NPM version build status Test coverage npm download

Find anomalies in a set of data using the isolation forest algorithm.

Installation

$ npm i ml-isolation-forest

Usage

The IsolationForest function is trained on a set of data, and can be used on new data to predict anomaly scores. The closer to one the anomaly score, the more anomalous is the data. Score closer to zero are considered normal data points. If all data points have anomaly scores close to 0.5, then we can consider all data to be normal points.

You may specify the number of trees or estimators constructed in the forest. By default the number of estimators is 100.

The return value is an array of floating point numbers from 0 to 1 representing an anomaly score for each entry in the testing data.

Inspired from the following research paper : https://cs.nju.edu.cn/zhouzh/zhouzh.files/publication/icdm08b.pdf?q=isolation-forest, and partially from the following work : https://github.com/jayhaluska/isolation-forest-js.

import IsolationForest from 'ml-isolation-forest';

let X = [
  [200, 50],
  [0.3, 0.1],
  [0.5, 0.3],
  [0.2, 0.1],
  [0.1, 0.1],
  [0.2, 0.05],
  [0.3, 0.3],
  [0.4, 0.2],
  [0.3, 0.4],
  [0.1, 0.1],
  [0.05, 0.1],
];
let anomalyDetector = new IsolationForest();
anomalyDetector.train(X);
let result = anomalyDetector.predict([
  [200, 300],
  [0, 0.1],
  [0.2, 0.1],
  [0.1, 0.2],
]);
console.log(result);
// 0.8138034871711983,0.36863229603385717,0.30237588018462913,0.3277350851756707

API Documentation

License

MIT