A switching multi-level method for the long tail recommendation problem

Article


Alshammari, G., Jorro-Aragoneses, J., Polatidis, N., Kapetanakis, S., Pimenidis, E. and Petridis, M. 2019. A switching multi-level method for the long tail recommendation problem. Journal of Intelligent & Fuzzy Systems. 37 (6), pp. 7189-7198. https://doi.org/10.3233/jifs-179331
TypeArticle
TitleA switching multi-level method for the long tail recommendation problem
AuthorsAlshammari, G., Jorro-Aragoneses, J., Polatidis, N., Kapetanakis, S., Pimenidis, E. and Petridis, M.
Abstract

Recommender systems are decision support systems that play an important part in generating a list of product or service recommendations for users based on the past experiences and interactions. The most popular recommendation method is Collaborative Filtering (CF) that is based on the users’ rating history to generate the recommendation. Although, recommender systems have been applied successfully in different areas such as e-Commerce and Social Networks, the popularity bias is still one of the challenges that needs to be further researched. Therefore, we propose a multi-level method that is based on a switching approach which solves the long tail recommendation problem (LTRP) when CF fails to find the target case. We have evaluated our method using two public datasets and the results show that it outperforms a number of bases lines and state-of-the-art alternatives with a further reduce of the recommendation error rates for items found in the long tail.

KeywordsGeneral Engineering, Statistics and Probability, Artificial Intelligence
PublisherIOS Press
JournalJournal of Intelligent & Fuzzy Systems
ISSN1064-1246
Electronic1875-8967
Publication dates
Online15 Jul 2019
Print23 Dec 2019
Publication process dates
Deposited26 Jul 2019
Accepted09 May 2019
Output statusPublished
Accepted author manuscript
Copyright Statement

The final publication "Alshammari, Gharbi et al. ‘A Switching Multi-level Method for the Long Tail Recommendation Problem’. 1 Jan. 2019 : 7189 – 7198." is available at IOS Press through https://doi.org/10.3233/jifs-179331

Digital Object Identifier (DOI)https://doi.org/10.3233/jifs-179331
LanguageEnglish
Permalink -

https://repository.mdx.ac.uk/item/88609

Download files

  • 26
    total views
  • 10
    total downloads
  • 1
    views this month
  • 1
    downloads this month

Export as