Considering user dynamic preferences for mitigating negative effects of long tail in recommender systems
Reza Shafiloo, Marjan Kaedi, Ali Pourmiri

TL;DR
This paper proposes a dynamic user preference model for recommender systems that improves accuracy and diversity by accounting for changing interests and age-related preferences, effectively mitigating the long tail problem.
Contribution
It introduces a novel approach that considers users' evolving preferences and age predictions to enhance long-tail item recommendations and overall accuracy.
Findings
Recommendation accuracy reaches 91%.
Long tail problem is better mitigated than previous methods.
Diversity in recommendations improves over time.
Abstract
Nowadays, with the increase in the amount of information generated in the webspace, many web service providers try to use recommender systems to personalize their services and make accessing the content convenient. Recommender systems that only try to increase the accuracy (i.e., the similarity of items to users' interest) will face the long tail problem. It means that popular items called short heads appear in the recommendation lists more than others since they have many ratings. However, unpopular items called long-tail items are used less than popular ones as they reduce accuracy. Other studies that solve the long-tail problem consider users' interests constant while their preferences change over time. We suggest that users' dynamic preferences should be taken into account to prevent the loss of accuracy when we use long-tail items in recommendation lists. This study shows that the…
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Taxonomy
TopicsRecommender Systems and Techniques · Advanced Bandit Algorithms Research
Methodstravel james
