A Study on the Representativeness Heuristics Problem in Large Language Models

IF 3.4 3区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS IEEE Access Pub Date : 2024-10-07 DOI:10.1109/ACCESS.2024.3474677
Jongwon Ryu;Jungeun Kim;Junyeong Kim
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Abstract

Large language models (LLMs) exhibit remarkable proficiency in text generation. However, their logical reasoning capabilities require enhancement. Major strides have been achieved in reasoning techniques for LLM, such as Few-shot, Zero-shot, and Chain-of-Thought (CoT). Nevertheless, these techniques have shortcomings, particularly in addressing the representativeness heuristic (RH) phenomenon. RH is a cognitive bias that occurs when a person judges the probability of an event or the likelihood that an object belongs to a particular category based on how well it matches the prototype or stereotype of that category. In this study, we investigated the pervasive issue of RH errors in LLMs. This research surpasses the constraints of previous studies by analyzing various RH scenarios that they did not cover and by directly constructing and testing the corresponding datasets. Moreover, a novel prompt called zero-shot-RH is proposed to augment the reasoning ability of LLMs, mitigate RH errors, and thus bolster logical reasoning. This approach seeks to enable LLMs to comprehend the given information better and reduce the biases stemming from RH errors. The prompt zero-shot-RH achieved an average accuracy higher than zero-shot-CoT by 0.145 and 0.277 in the tasks of correct reasoning and correct reasonings by sex, respectively, without relying on RH. The outcomes of this research endeavor are a deeper understanding of RH errors in LLMs and novel strategies to mitigate these biases, thereby advancing the domain of logical reasoning within LLMs.
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大型语言模型中的代表性启发式问题研究
大型语言模型(LLM)在文本生成方面表现出非凡的能力。然而,它们的逻辑推理能力需要加强。LLM 的推理技术已经取得了长足进步,如 "少量推理"(Few-shot)、"零点推理"(Zero-shot)和 "思维链推理"(CoT)。然而,这些技术也有不足之处,尤其是在解决代表性启发式(RH)现象方面。RH 是一种认知偏差,当一个人根据某一事件或某一物体属于某一特定类别的可能性与该类别的原型或刻板印象的匹配程度来判断该事件或该物体属于该类别的可能性时,就会出现这种认知偏差。在本研究中,我们调查了 LLM 中普遍存在的 RH 错误问题。本研究超越了以往研究的局限,分析了以往研究未涉及的各种 RH 场景,并直接构建和测试了相应的数据集。此外,研究还提出了一种名为 "zero-shot-RH "的新颖提示,以增强 LLM 的推理能力,减少 RH 错误,从而提高逻辑推理能力。这种方法旨在让语言学家更好地理解给定信息,减少因 RH 错误而产生的偏差。在正确推理和按性别正确推理的任务中,在不依赖 RH 的情况下,"零镜头-RH "提示的平均准确率分别比 "零镜头-CoT "高出 0.145 和 0.277。这项研究工作的成果是加深了对法律硕士中RH误差的理解,并提出了减轻这些偏差的新策略,从而推动了法律硕士逻辑推理领域的发展。
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来源期刊
IEEE Access
IEEE Access COMPUTER SCIENCE, INFORMATION SYSTEMSENGIN-ENGINEERING, ELECTRICAL & ELECTRONIC
CiteScore
9.80
自引率
7.70%
发文量
6673
审稿时长
6 weeks
期刊介绍: IEEE Access® is a multidisciplinary, open access (OA), applications-oriented, all-electronic archival journal that continuously presents the results of original research or development across all of IEEE''s fields of interest. IEEE Access will publish articles that are of high interest to readers, original, technically correct, and clearly presented. Supported by author publication charges (APC), its hallmarks are a rapid peer review and publication process with open access to all readers. Unlike IEEE''s traditional Transactions or Journals, reviews are "binary", in that reviewers will either Accept or Reject an article in the form it is submitted in order to achieve rapid turnaround. Especially encouraged are submissions on: Multidisciplinary topics, or applications-oriented articles and negative results that do not fit within the scope of IEEE''s traditional journals. Practical articles discussing new experiments or measurement techniques, interesting solutions to engineering. Development of new or improved fabrication or manufacturing techniques. Reviews or survey articles of new or evolving fields oriented to assist others in understanding the new area.
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