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Auteurs principaux: Lizenberger, Andreas, Pfeifer, Ferdinand, Polewka, Bastian
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2405.18011
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author Lizenberger, Andreas
Pfeifer, Ferdinand
Polewka, Bastian
author_facet Lizenberger, Andreas
Pfeifer, Ferdinand
Polewka, Bastian
contents Cluster-based algorithm selection deals with selecting recommendation algorithms on clusters of users to obtain performance gains. No studies have been attempted for many combinations of clustering approaches and recommendation algorithms. We want to show that clustering users prior to algorithm selection increases the performance of recommendation algorithms. Our study covers eight datasets, four clustering approaches, and eight recommendation algorithms. We select the best performing recommendation algorithm for each cluster. Our work shows that cluster-based algorithm selection is an effective technique for optimizing recommendation algorithm performance. For five out of eight datasets, we report an increase in nDCG@10 between 19.28% (0.032) and 360.38% (0.191) compared to algorithm selection without prior clustering.
format Preprint
id arxiv_https___arxiv_org_abs_2405_18011
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Rethinking Recommender Systems: Cluster-based Algorithm Selection
Lizenberger, Andreas
Pfeifer, Ferdinand
Polewka, Bastian
Information Retrieval
Cluster-based algorithm selection deals with selecting recommendation algorithms on clusters of users to obtain performance gains. No studies have been attempted for many combinations of clustering approaches and recommendation algorithms. We want to show that clustering users prior to algorithm selection increases the performance of recommendation algorithms. Our study covers eight datasets, four clustering approaches, and eight recommendation algorithms. We select the best performing recommendation algorithm for each cluster. Our work shows that cluster-based algorithm selection is an effective technique for optimizing recommendation algorithm performance. For five out of eight datasets, we report an increase in nDCG@10 between 19.28% (0.032) and 360.38% (0.191) compared to algorithm selection without prior clustering.
title Rethinking Recommender Systems: Cluster-based Algorithm Selection
topic Information Retrieval
url https://arxiv.org/abs/2405.18011