CLJun 4

Analysis of the Neglect-Zero Effect in Large Language Models

arXiv:2606.0586434.9Has Code
Predicted impact top 9% in CL · last 90 daysOriginality Synthesis-oriented
AI Analysis

For researchers in cognitive science and AI, this work tests whether LLMs replicate a specific human reasoning bias, finding no evidence of it.

The study investigates whether large language models exhibit the human cognitive bias known as the neglect-zero effect, using a structural priming paradigm. Results suggest that the analyzed LLMs do not show this effect.

We investigate the extent to which the language processing of LLMs resembles human cognitive processes, focusing on a human cognitive bias called the $\textit{neglect-zero effect}$. This effect refers to the human tendency to ignore $\textit{zero-models}$, which are configurations that render a proposition vacuously true by virtue of an empty set. We focus on two types of inferences driven by the neglect-zero effect, and examine how LLMs process these inferences by comparing their behavior with that in an inference that does not involve the neglect-zero effect. For this purpose, we employ a paradigm based on $\textit{structural priming}$, where recent exposure to a preceding sentence (the $\textit{prime}$) facilitates the processing of a subsequent sentence (the $\textit{target}$) due to their structural similarity. We prepare primes to force LLMs to consider the zero-model, and analyze whether they also consider it in the target. The results suggest that the neglect-zero effect may not occur in the LLMs analyzed in this study. Our code is available at https://github.com/ynklab/neglect_zero

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