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The Impact of Feature Quantity on Recommendation Algorithm Performance

Source code for the paper accepted at the 32nd Irish Conference on Artificial Intelligence and Cognitive Science (AICS 2024).

This project contains a modified version of LibRecommender (Original at: https://github.com/massquantity/LibRecommender).

Many parts of this project will NOT run on Windows due to library dependencies.
Either run this project on a Linux environment or run 'docker compose' to build an image with the requirements.

To get started, you need to download the data first. Check the readme in the folder ml-100k for instructions.
The final results, as reported in the paper, are stored in the results folder for convenience.

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