ARROW: Adaptive Reasoning for LLM-based Recommendation with Explainability
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초록

The integration of Large Language Models (LLMs) has led to substantial advancements in recommender systems (RS) by leveraging their vast knowledge and reasoning abilities. However, the semantic gap between the linguistic knowledge of LLMs and the collaborative patterns in RS hinders their effective fusion. This issue results in a fundamental limitation where models, despite achieving high prediction accuracy, are unable to provide coherent rationales justifying their recommendations. In this paper, we propose ARROW (Adaptive Reasoning for LLM-based RecommendatiOn With explainability), a novel framework that effectively elicits the intrinsic reasoning capabilities of LLMs to bridge this semantic gap. ARROW is carefully designed to guide the model in generating an explicit reasoning process for its recommendation decisions using chain-of-thought prompting. Furthermore, we introduce the Adaptive Reasoning Modulator, which quantifies the uncertainty of the reasoning process and adaptively adjusts its weight to maximize the model's reasoning efficacy. Our extensive experiments demonstrate that ARROW achieves significant performance improvements over strong baseline models while providing human-interpretable explanations. Our code is available at https://github.com/yunwooseong/ARROW.

키워드

Recommender SystemLarge Language ModelsLLM Reasoning
제목
ARROW: Adaptive Reasoning for LLM-based Recommendation with Explainability
저자
Yun, Woo-SeongKim, Min-SeongCho, Yoon-Sik
DOI
10.1145/3773966.3779396
발행일
2026
유형
Conference Paper
저널명
WSDM 2026 - Proceedings of the 19th ACM International Conference on Web Search and Data Mining
페이지
1283 ~ 1287