Difference between revisions of "Github Repo Recommendation:Topic Model meets Code"

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Collaborative filtering typically uses some form of matrix factorization technique, and ignores content (in this case, the repos/code).
 
Collaborative filtering typically uses some form of matrix factorization technique, and ignores content (in this case, the repos/code).
In this project, we propose to incorporate inherent ''topics'' of the source code (of repos) to improve predictions.
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Alternatively, in this project, we propose to incorporate inherent ''topics'' of the source code (of repos) to improve predictions.
  
 
==Team==
 
==Team==

Revision as of 23:20, 8 October 2012

Task

Item recommendation

Overview

Github is a social network site for programmers, where they can host source code repositories (also called repos). Users can watch repos they are interested in; when a user is watching a repo, s/he will receive status updates on its activities (such as commits, tagging, etc…).

In 2009, Github hosted a recommendation contest, where the objective was to recommend repositories to users. The dataset contained 56K users, 120K repositories, and 440K user-watches-repo relationships between them.

Collaborative filtering typically uses some form of matrix factorization technique, and ignores content (in this case, the repos/code). Alternatively, in this project, we propose to incorporate inherent topics of the source code (of repos) to improve predictions.

Team

Naoki Orii

Datasets

Baseline Method

A collaborative-filtering based method, such as SVD

Challenges

  • As it may be expensive to perform topic modeling on 120K repos, we may perform prediction on a subset of this data

More info about the Github contest

More information about the Github contest is available below:

Related Work