LLM Reasoning 相关度: 7/10

The Role of the Availability Heuristic in Multiple-Choice Answering Behaviour

Leonidas Zotos, Hedderik van Rijn, Malvina Nissim
arXiv: 2602.17377v1 发布: 2026-02-19 更新: 2026-02-19

AI 摘要

研究表明,在多选题中,更易被想到的选项更有可能是正确答案,可用于建模学生行为。

主要贡献

  • 验证了可用性启发式在多选题解答中的作用
  • 提出了一种基于语料库评估选项认知可用性的计算方法
  • 发现LLM生成的选项也表现出类似的可用性模式

方法论

利用大型语料库(Wikipedia)评估多选题选项的可用性,并分析可用性与正确答案之间的关系。

原文摘要

When students are unsure of the correct answer to a multiple-choice question (MCQ), guessing is common practice. The availability heuristic, proposed by A. Tversky and D. Kahneman in 1973, suggests that the ease with which relevant instances come to mind, typically operationalised by the mere frequency of exposure, can offer a mental shortcut for problems in which the test-taker does not know the exact answer. Is simply choosing the option that comes most readily to mind a good strategy for answering MCQs? We propose a computational method of assessing the cognitive availability of MCQ options operationalised by concepts' prevalence in large corpora. The key finding, across three large question sets, is that correct answers, independently of the question stem, are significantly more available than incorrect MCQ options. Specifically, using Wikipedia as the retrieval corpus, we find that always selecting the most available option leads to scores 13.5% to 32.9% above the random-guess baseline. We further find that LLM-generated MCQ options show similar patterns of availability compared to expert-created options, despite the LLMs' frequentist nature and their training on large collections of textual data. Our findings suggest that availability should be considered in current and future work when computationally modelling student behaviour.

标签

可用性启发式 多选题 认知建模 LLM

arXiv 分类

cs.CL