Retrieval Enhanced Feedback via In-context Neural Error-book
- URL: http://arxiv.org/abs/2508.16313v4
- Date: Tue, 23 Sep 2025 02:08:36 GMT
- Title: Retrieval Enhanced Feedback via In-context Neural Error-book
- Authors: Jongyeop Hyun, Bumsoo Kim,
- Abstract summary: We propose REFINE: Retrieval-Enhanced Feedback via In-student Neural Error-context book.<n> REFINE systematically structures errors and provides targeted feedback.<n>Our results demonstrate substantial speedup, reduced computational costs, and successful generalization.
- Score: 8.862195491555575
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Recent advancements in Large Language Models (LLMs) have significantly improved reasoning capabilities, with in-context learning (ICL) emerging as a key technique for adaptation without retraining. While previous works have focused on leveraging correct examples, recent research highlights the importance of learning from errors to enhance performance. However, existing methods lack a structured framework for analyzing and mitigating errors, particularly in Multimodal Large Language Models (MLLMs), where integrating visual and textual inputs adds complexity. To address this issue, we propose REFINE: Retrieval-Enhanced Feedback via In-context Neural Error-book, a teacher-student framework that systematically structures errors and provides targeted feedback. REFINE introduces three systematic queries to construct structured feedback -- Feed-Target, Feed-Check, and Feed-Path -- to enhance multimodal reasoning by prioritizing relevant visual information, diagnosing critical failure points, and formulating corrective actions. Unlike prior approaches that rely on redundant retrievals, REFINE optimizes structured feedback retrieval, improving inference efficiency, token usage, and scalability. Our results demonstrate substantial speedup, reduced computational costs, and successful generalization, highlighting REFINE's potential for enhancing multimodal reasoning.
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