大型语言模型推理中动态策略选择的自适应求解器框架

IF 6.9 1区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Information Processing & Management Pub Date : 2025-05-01 Epub Date: 2025-01-06 DOI:10.1016/j.ipm.2024.104052
Jianpeng Zhou , Wanjun Zhong , Yanlin Wang , Jiahai Wang
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引用次数: 0

摘要

大型语言模型(llm)在处理推理任务方面表现出令人印象深刻的能力。然而,与人类不同的是,人类可以本能地根据任务的复杂性调整他们的问题解决策略,大多数基于法学硕士的方法采用一种通用的方法。这些方法采用一致的模型、样本大小、提示方法和问题分解的级别,而不考虑问题的复杂性。这些方法的不灵活性可能带来不必要的计算开销或次优性能。为了解决这一限制,我们引入了一个自适应求解器(AS)框架,该框架可以动态地调整求解策略以适应各种问题,从而实现测试时计算资源的灵活分配。该框架有两个主要模块。初始评估模块使用答案一致性评估当前解决方案的可靠性。如果解决方案被认为不可靠,则随后的适应模块将发挥作用。在这个模块中,各种类型的适应策略被协同使用。通过这种动态和多方面的调整,我们的框架可以帮助减少计算消耗并提高性能。复杂推理基准的实验结果表明,我们的方法可以在保持原始性能的同时显著降低API成本(高达85%)。或者,在相同的成本下,与基线相比,它的精度提高了4.5%。数据集和代码可在https://github.com/john1226966735/Adaptive-Solver上获得。
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Adaptive-solver framework for dynamic strategy selection in large language model reasoning
Large Language Models (LLMs) demonstrate impressive ability in handling reasoning tasks. However, unlike humans who can instinctively adapt their problem-solving strategies to the complexity of task, most LLM-based methods adopt a one-size-fits-all approach. These methods employ consistent models, sample sizes, prompting methods and levels of problem decomposition, regardless of the problem complexity. The inflexibility of these methods can bring unnecessary computational overhead or sub-optimal performance. To address this limitation, we introduce an Adaptive-Solver (AS) framework that dynamically adapts solving strategies to suit various problems, enabling the flexible allocation of test-time computational resources. The framework functions with two primary modules. The initial evaluation module assesses the reliability of the current solution using answer consistency. If the solution is deemed unreliable, the subsequent adaptation module comes into play. Within this module, various types of adaptation strategies are employed collaboratively. Through such dynamic and multi-faceted adaptations, our framework can help reduce computational consumption and improve performance. Experimental results from complex reasoning benchmarks reveal that our method can significantly reduce API costs (up to 85%) while maintaining original performance. Alternatively, it achieves up to 4.5% higher accuracy compared to the baselines at the same cost. The datasets and code are available at https://github.com/john1226966735/Adaptive-Solver.
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来源期刊
Information Processing & Management
Information Processing & Management 工程技术-计算机:信息系统
CiteScore
17.00
自引率
11.60%
发文量
276
审稿时长
39 days
期刊介绍: Information Processing and Management is dedicated to publishing cutting-edge original research at the convergence of computing and information science. Our scope encompasses theory, methods, and applications across various domains, including advertising, business, health, information science, information technology marketing, and social computing. We aim to cater to the interests of both primary researchers and practitioners by offering an effective platform for the timely dissemination of advanced and topical issues in this interdisciplinary field. The journal places particular emphasis on original research articles, research survey articles, research method articles, and articles addressing critical applications of research. Join us in advancing knowledge and innovation at the intersection of computing and information science.
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