SynEvaRec: A Framework for Evaluating Recommender Systems on Synthetic Data Classes
Author:
Funder
Russian Science Foundation
Publisher
IEEE
Link
http://xplorestaging.ieee.org/ielx7/9679833/9679835/09679853.pdf?arnumber=9679853
Reference34 articles.
1. Recommender System Based on Temporal Models: A Systematic Review
2. I Like It... I Like It Not: Evaluating User Ratings Noise in Recommender Systems
3. Collaborative Filtering with Noisy Ratings
4. Recsim: A configurable simulation platform for recommender systems;ie,2019
5. A survey on session-based recommender systems;wang;ACM Comput Surv,2021
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