Optimization of fuzzy similarity by genetic algorithm in user‐based collaborative filtering recommender systems

The most important subjects in the memory‐based collaborative filtering recommender system (RS) are to accurately calculate the similarities between users and finally finding interesting recommendations for active users. The main purpose of this research is to provide a list of the best items for re...

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Bibliographic Details
Published inExpert systems Vol. 39; no. 4
Main Authors Houshmand‐Nanehkaran, Farimah, Lajevardi, Seyed Mohammadreza, Mahlouji‐Bidgholi, Mahmoud
Format Journal Article
LanguageEnglish
Published Oxford Blackwell Publishing Ltd 01.05.2022
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ISSN0266-4720
1468-0394
DOI10.1111/exsy.12893

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Summary:The most important subjects in the memory‐based collaborative filtering recommender system (RS) are to accurately calculate the similarities between users and finally finding interesting recommendations for active users. The main purpose of this research is to provide a list of the best items for recommending in less time. The fuzzy‐genetic collaborative filtering (FGCF) approach recommends items by optimizing fuzzy similarities in the continuous genetic algorithm (CGA). In this method, first, the crisp values of user ratings are converted to fuzzy ratings, and then the fuzzy similarities are calculated. Similarity values are placed into the genes of the genetic algorithm, optimized, and finally, they are used in fuzzy prediction. Therefore, the fuzzy system is used twice in this process. Experimental results on RecSys, Movielens 100 K, and Movielens 1 M datasets show that FGCF improves the collaborative filtering RS performance in terms of quality and accuracy of recommendations, time and space complexities. The FGCF method is robust against the sparsity of data due to the correct choice of neighbours and avoids the users' different rating scales problem but it not able to solve the cold‐start challenge.
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ISSN:0266-4720
1468-0394
DOI:10.1111/exsy.12893