HiMARS: Hybrid multi-objective algorithms for recommender systems
Elaheh Lotfian, Alireza Kabgani

TL;DR
This paper introduces four hybrid multi-objective algorithms inspired by established optimization methods to improve both accuracy and diversity in recommender systems, addressing a key challenge in the field.
Contribution
The work presents novel hybrid algorithms based on NNIA, AMOSA, and NSGA-II for balancing accuracy and diversity in recommendations, validated on real datasets.
Findings
Some algorithms significantly improve accuracy and diversity.
The proposed methods effectively generate Pareto-optimal recommendation lists.
Evaluation metrics show enhanced performance over existing approaches.
Abstract
In recommender systems, it is well-established that both accuracy and diversity are crucial for generating high-quality recommendation lists. However, achieving a balance between these two typically conflicting objectives remains a significant challenge. In this work, we address this challenge by proposing four novel hybrid multi-objective algorithms inspired by the Non-dominated Neighbor Immune Algorithm (NNIA), Archived Multi-Objective Simulated Annealing (AMOSA), and Non-dominated Sorting Genetic Algorithm-II (NSGA-II), aimed at simultaneously enhancing both accuracy and diversity through multi-objective optimization. Our approach follows a three-stage process: First, we generate an initial top- list using item-based collaborative filtering for a given user. Second, we solve a bi-objective optimization problem to identify Pareto-optimal top- recommendation lists, where $s \ll…
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