CLAIOct 8, 2025

Comparing Human and Language Models Sentence Processing Difficulties on Complex Structures

arXiv:2510.07141v21 citationsh-index: 17
Originality Synthesis-oriented
AI Analysis

This research addresses the problem of understanding processing similarities between humans and LLMs for linguists and AI researchers, offering insights into model-human convergence and divergence, though it is incremental in comparing existing models on new data.

The study compared human and large language model (LLM) sentence comprehension across seven challenging linguistic structures, finding that LLMs, especially on garden path sentences, struggle significantly, with the strongest models achieving 93.7% accuracy on non-garden path structures but only 46.8% on garden path ones.

Large language models (LLMs) that fluently converse with humans are a reality - but do LLMs experience human-like processing difficulties? We systematically compare human and LLM sentence comprehension across seven challenging linguistic structures. We collect sentence comprehension data from humans and five families of state-of-the-art LLMs, varying in size and training procedure in a unified experimental framework. Our results show LLMs overall struggle on the target structures, but especially on garden path (GP) sentences. Indeed, while the strongest models achieve near perfect accuracy on non-GP structures (93.7% for GPT-5), they struggle on GP structures (46.8% for GPT-5). Additionally, when ranking structures based on average performance, rank correlation between humans and models increases with parameter count. For each target structure, we also collect data for their matched baseline without the difficult structure. Comparing performance on the target vs. baseline sentences, the performance gap observed in humans holds for LLMs, with two exceptions: for models that are too weak performance is uniformly low across both sentence types, and for models that are too strong the performance is uniformly high. Together, these reveal convergence and divergence in human and LLM sentence comprehension, offering new insights into the similarity of humans and LLMs.

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