ArXiv TLDR

How Personal Characteristics Shape User Exploration of Diverse Movie Recommendations with a LLM-Based Multi-Agent System

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2604.24405

Yufan Zhou, Yirui Huang, Zhao Wang, Yucheng Jin

cs.HC

TLDR

A multi-agent LLM system boosts recommendation diversity and novelty, but user personality and GenAI experience significantly shape exploration.

Key contributions

  • Multi-agent LLM system significantly increases perceived novelty and Shannon Diversity.
  • User personality traits (conscientiousness, extraversion) influence perceived accuracy and diversity.
  • Prior GenAI recommendation experience boosts diversity, while skepticism reduces it.
  • Highlights interaction effects between system design and individual user characteristics.

Why it matters

This paper shows LLM multi-agent systems boost recommendation diversity. Crucially, user personality and GenAI experience significantly shape interaction. This calls for personality-aware conversational recommenders, moving beyond one-size-fits-all designs.

Original Abstract

Diversity is an important evaluation criterion for recommender systems beyond accuracy, yet users differ in their willingness to engage with novel and diverse content. In this work, we investigate how a Large Language Model (LLM)-based multi-agent system supports users' exploration of diverse recommendations, and how individual characteristics shape user experiences. We conducted a between-subjects user study (N = 100) comparing a single-agent system (baseline) with a multi-agent system for movie recommendations. We measured Perceived Accuracy, diversity, novelty, and overall rating, and examined the influence of personal characteristics, including personality traits, demographics, GenAI recommendation experience, and GenAI skepticism. Results show that the multi-agent system significantly increases Perceived Novelty and Shannon Diversity. Conscientiousness is positively associated with Perceived Accuracy and diversity, whereas extraversion is negatively associated with Perceived Diversity. Prior experience with GenAI-based recommendations is positively associated with Shannon Diversity, while skepticism toward GenAI is negatively associated with it. We also observe significant interaction effects between system design and user characteristics. These findings highlight the importance of personality-aware conversational recommender systems and caution against one-size-fits-all multi-agent designs.

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