TL;DR
This paper introduces a user-centric recommendation framework that balances relevance and diversity to maximize knowledge exposure, using a probabilistic user model and a copula-based strategy, outperforming existing methods.
Contribution
It presents a novel approach combining relevance and diversity via a copula function, focusing on maximizing user knowledge through a new user behavior model.
Findings
Outperforms state-of-the-art recommendation algorithms.
Maximizes diversity while maintaining relevance.
Effective in increasing user knowledge exposure.
Abstract
Providing recommendations that are both relevant and diverse is a key consideration of modern recommender systems. Optimizing both of these measures presents a fundamental trade-off, as higher diversity typically comes at the cost of relevance, resulting in lower user engagement. Existing recommendation algorithms try to resolve this trade-off by combining the two measures, relevance and diversity, into one aim and then seeking recommendations that optimize the combined objective, for a given number of items to recommend. Traditional approaches, however, do not consider the user interaction with the recommended items. In this paper, we put the user at the central stage, and build on the interplay between relevance, diversity, and user behavior. In contrast to applications where the goal is solely to maximize engagement, we focus on scenarios aiming at maximizing the total amount of…
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