Project details for MyMediaLite

Logo MyMediaLite 1.0

by zenog - March 19, 2011, 22:16:30 CET [ Project Homepage BibTeX Download ]

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Description:

MyMediaLite is a lightweight, multi-purpose library of recommender system algorithms.

It addresses the two most common scenarios in collaborative filtering:

  • rating prediction (e.g. on a scale of 1 to 5 stars), and
  • item prediction from implicit feedback (e.g. from clicks or purchase actions).

MyMediaLite gives you a choice of many recommendation methods:

  • dozens of different recommender engines
  • methods can use collaborative and attribute/content data

MyMediaLite is ready to use:

  • MyMediaLite includes evaluation routines for rating prediction and item prediction; it can measure MAE, NMAE, RMSE, AUC, prec@N, MAP, NDCG.
  • It also comes with command line tools for both tasks that read a simple text-based input format.

MyMediaLite is compact: The core library has a size of about 100KB.

Portability: Written in C#, for the .NET platform; runs on every architecture supported by Mono: Linux, Windows, Mac OS X.

Freedom: MyMediaLite is free software/open source software. It can be used, modified, and distributed under the terms of the GNU General Public License (GPL).

Additional features:

  • Serialization: save and reload recommender engine models
  • Real-time online updates for many recommender engines
Changes to previous version:

Version 1.0 features major changes in the API and in the way the ratings/user feedback is stored internally. This makes it feasible to load big datasets like the ones from KDD Cup 2011 into main memory. We also ship extra code and a command-line program to handle the KDD Cup data, and some example Python scripts. See the Changes file for details and further improvements.

BibTeX Entry: Download
Supported Operating Systems: Linux, Windows, Solaris, Mac Os X
Data Formats: Csv, Tab Separated, Sql
Tags: Gradient Based Learning, Large Scale Learning, Algorithms, Data Mining, Evaluation, Supervised Learning, Collaborative Filtering, Matrix Factorization, Recommender Systems, Knn, Library, Dotnet, Mono
Archive: download here

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