kdevo/chaos-rrs
Chaos - a first of its kind framework for researching Reciprocal Recommender Systems (RRS).
This framework helps researchers studying how to connect people based on mutual interest, like finding a study buddy or a collaborator for a project. You provide data about individuals and their interactions, and it outputs recommendations for who might be interested in whom. It's designed for academic researchers in the field of recommender systems.
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Use this if you are a researcher focused on human-to-human recommendation systems and need a reproducible environment to test and compare different algorithms.
Not ideal if you need a production-ready system for commercial applications, as it is currently built for research and experimentation.
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Python
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Last pushed
Nov 07, 2021
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