Diverging Transformer Predictions for Human Sentence Processing: A Comprehensive Analysis of Agreement Attraction Effects
arXiv cs.CL / 3/18/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The study systematically evaluates eleven autoregressive transformers using a surprisal-based linking mechanism across a broad set of English agreement attraction configurations to test their cognitive plausibility.
- The results show transformers generally align with human reading times for prepositional phrase configurations but fail to replicate human asymmetries in object-extracted relative clauses, with large model-to-model variation.
- No model fully reproduces the asymmetric interference patterns observed in humans, suggesting current transformers do not adequately explain human morphosyntactic processing.
- The authors argue that evaluating transformers as cognitive models requires rigorous, comprehensive experimental designs to avoid spurious generalizations from isolated syntactic configurations or single models.
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