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[ARTICLE · art-58313] src=arxiv.org ↗ pub= topic=large-language-models verified=true sentiment=↑ positive

Consensus vs. Dissent: Dynamic LLM Modeling of Subjective Preferences in Group Recommenders

Researchers fine-tuned LLMs on human survey data to create Judgmental Llama and Judgmental OLMo, which dynamically select aggregation strategies for group recommendations. In a user study (n=284), their method achieved the highest satisfaction and consensus scores, showing LLMs can align with subjective human judgments when considering group configurations.

read1 min views1 publishedJul 14, 2026

arXiv:2607.10235v1 Announce Type: new Abstract: Previous work in group recommender systems has demonstrated a sensitivity to the distribution of preferences within a group. Specifically, the selection of the preference aggregation strategy benefits from considering such group configurations. In this paper, we study whether LLMs are able to mimic this sensitivity and to select the ideal aggregation strategy (and corresponding recommendation) according to nuanced human perceptions of fairness, satisfaction, and consensus. We do this by fine-tuning Large Language Models (LLMs) on human survey data to serve as real-time judgmental models within the recommendation pipeline. Using a reasoning dataset distilled from DeepSeek-V3.1 and human ground truth assessments, we develop Judgmental Llama and Judgmental OLMo to simulate group assessments. Our pipeline successfully generates multiple recommendation candidates based on social choice-based aggregation strategies and dynamically selects the one that maximizes these predicted human-like evaluations. We further validate these suggestions in a user study (n=284) and find that our methodology achieved the highest scores for satisfaction and group consensus. Furthermore, we find that LLM judgments are most aligned with human perceptions of fairness, satisfaction and consensus when we also consider interaction effects between our LLM-based method and group configuration (e.g., minority or coalition). These findings give further support for dynamically adapting aggregation strategies to specific within-group preference distributions, and highlight the advantage of using LLMs for an adaptation that is aligned with subjective human judgments.

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