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Evaluation of Deontic Conditional Reasoning in Large Language Models: The Case of Wason's Selection Task

Hirohiko Abe, Kentaro Ozeki, Risako Ando, Takanobu Morishita, Koji Mineshima, Mitsuhiro Okada

TL;DR

A new Wason Selection Task dataset is introduced that explicitly encodes deontic modality to systematically distinguish deontic from descriptive conditionals, and used to examine LLMs'conditional reasoning under deontic rules to suggest that the performance of LLMs varies systematically across rule types and that their error patterns can parallel well-known human biases in this paradigm.

Abstract

As large language models (LLMs) advance in linguistic competence, their reasoning abilities are gaining increasing attention. In humans, reasoning often performs well in domain specific settings, particularly in normative rather than purely formal contexts. Although prior studies have compared LLM and human reasoning, the domain specificity of LLM reasoning remains underexplored. In this study, we introduce a new Wason Selection Task dataset that explicitly encodes deontic modality to systematically distinguish deontic from descriptive conditionals, and use it to examine LLMs' conditional reasoning under deontic rules. We further analyze whether observed error patterns are better explained by confirmation bias (a tendency to seek rule-supporting evidence) or by matching bias (a tendency to ignore negation and select items that lexically match elements of the rule). Results show that, like humans, LLMs reason better with deontic rules and display matching-bias-like errors. Together, these findings suggest that the performance of LLMs varies systematically across rule types and that their error patterns can parallel well-known human biases in this paradigm.

Evaluation of Deontic Conditional Reasoning in Large Language Models: The Case of Wason's Selection Task

TL;DR

A new Wason Selection Task dataset is introduced that explicitly encodes deontic modality to systematically distinguish deontic from descriptive conditionals, and used to examine LLMs'conditional reasoning under deontic rules to suggest that the performance of LLMs varies systematically across rule types and that their error patterns can parallel well-known human biases in this paradigm.

Abstract

As large language models (LLMs) advance in linguistic competence, their reasoning abilities are gaining increasing attention. In humans, reasoning often performs well in domain specific settings, particularly in normative rather than purely formal contexts. Although prior studies have compared LLM and human reasoning, the domain specificity of LLM reasoning remains underexplored. In this study, we introduce a new Wason Selection Task dataset that explicitly encodes deontic modality to systematically distinguish deontic from descriptive conditionals, and use it to examine LLMs' conditional reasoning under deontic rules. We further analyze whether observed error patterns are better explained by confirmation bias (a tendency to seek rule-supporting evidence) or by matching bias (a tendency to ignore negation and select items that lexically match elements of the rule). Results show that, like humans, LLMs reason better with deontic rules and display matching-bias-like errors. Together, these findings suggest that the performance of LLMs varies systematically across rule types and that their error patterns can parallel well-known human biases in this paradigm.
Paper Structure (14 sections, 7 figures, 28 tables)

This paper contains 14 sections, 7 figures, 28 tables.

Figures (7)

  • Figure 1: An example of error for a deontic rule with Pos-Pos polarity.
  • Figure 2: An example of error for a deontic rule with Neg-Pos polarity.
  • Figure 3: An example of error for a descriptive rule with Pos-Pos polarity.
  • Figure 4: An example of error for a descriptive rule with Neg-Neg polarity.
  • Figure :
  • ...and 2 more figures