Bayesian Optimization with LLM-Based Acquisition Functions for Natural Language Preference Elicitation
David Eric Austin, Anton Korikov, Armin Toroghi, Scott Sanner

TL;DR
This paper introduces PEBOL, a Bayesian Optimization framework leveraging large language models to actively elicit natural language preferences, improving personalized conversational recommendations in a data-efficient manner.
Contribution
It formulates natural language preference elicitation within a Bayesian Optimization framework, combining LLMs with decision-theoretic strategies to enhance recommendation accuracy.
Findings
PEBOL achieves higher MRR@10 (up to 0.27) after 10 dialogue turns.
PEBOL outperforms monolithic LLM baselines in preference elicitation.
The approach effectively balances exploration and exploitation in NL feedback.
Abstract
Designing preference elicitation (PE) methodologies that can quickly ascertain a user's top item preferences in a cold-start setting is a key challenge for building effective and personalized conversational recommendation (ConvRec) systems. While large language models (LLMs) enable fully natural language (NL) PE dialogues, we hypothesize that monolithic LLM NL-PE approaches lack the multi-turn, decision-theoretic reasoning required to effectively balance the exploration and exploitation of user preferences towards an arbitrary item set. In contrast, traditional Bayesian optimization PE methods define theoretically optimal PE strategies, but cannot generate arbitrary NL queries or reason over content in NL item descriptions -- requiring users to express preferences via ratings or comparisons of unfamiliar items. To overcome the limitations of both approaches, we formulate NL-PE in a…
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Taxonomy
MethodsRefunds@Expedia|||How do I get a full refund from Expedia? · 15 Ways to Contact How can i speak to someone at Delta Airlines · Attention Is All You Need · Linear Layer · Adam · Layer Normalization · Multi-Head Attention · Cosine Annealing · Weight Decay · Attention Dropout
