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A Synergistic Integration Between Large Language Models and the Best-Worst Method

Hunter Briegel () and Tharita Tipdecho ()
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Hunter Briegel: Unaffiliated
Tharita Tipdecho: The University of Queensland

Chapter Chapter 2 in Advances in Best–Worst Method, 2025, pp 23-39 from Springer

Abstract: Abstract Large language models (LLMs) are increasingly being deployed for a variety of tasks, including recommendation systems. They are uniquely suited to making inferences in zero-shot circumstances given a purported capacity to reason across domains. However, there are several drawbacks to their use that limit real-world applicability. Namely, LLMs make opaque judgements that are not easily understood by users or subject to human control. Additionally, when many alternatives are evaluated, a robust external procedure is needed to control the model’s predictions. The Best-Worst Method (BWM) is an MCDA technique that can be used to extract preference weights and evaluate alternatives in a pairwise manner. This work proposes a hybrid model using BWM and LLMs that provides a human-interpretable framework for AI-ML recommendation. The system can function independently or as a refinement layer on top of existing retrieval systems. Due to the use of natural language as a mediator, it can process a broad spectrum of user and alternative information. An evaluation is conducted using the MovieLens dataset, showing a positive monotonic relationship between our predicted scores and user-submitted reviews.

Keywords: Large language models; Hybrid recommendation systems; Retrieval-augmented generation; Hybrid multiple-criteria decision analysis (search for similar items in EconPapers)
Date: 2025
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Persistent link: https://EconPapers.repec.org/RePEc:spr:lnopch:978-3-031-76766-1_2

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DOI: 10.1007/978-3-031-76766-1_2

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