In this work, we used implicit ratings and an auto-encoder with a modified cost function to make a GitHub Recommender System.
Here we collected the data and constructed the confidence and prediction matrices based on implicit rating schemes. This data was then used to train an auto-encoder with a modified cost function and test the trained model using recall metric.
Refer the report for a detailed description.
Report.pdf
- a detailed description of the methodology and results of the project.scripts/autoencoder.py
- the autoencoder code.scripts/data_curation
- contains all the scripts used for dataset creation.report_tex
- contains the .tex files of theReport.pdf
.