Feature overwriting as a finite mixture process: Evidence from comprehension data
Shravan Vasishth, Lena A. J\"ager, Bruno Nicenboim

TL;DR
This paper proposes a novel explanation for agreement attraction effects in comprehension data, modeling it as a finite mixture process of feature overwriting, and demonstrates its superiority over existing accounts through reanalysis of multiple datasets.
Contribution
It introduces a finite mixture model to explain agreement attraction, providing a new perspective that outperforms previous feature percolation and cue-based retrieval accounts.
Findings
Feature overwriting model fits data better in 9 of 10 studies.
Finite mixture process effectively explains agreement attraction effects.
Reanalysis supports feature overwriting as a plausible mechanism.
Abstract
The ungrammatical sentence "The key to the cabinets are on the table" is known to lead to an illusion of grammaticality. As discussed in the meta-analysis by Jaeger et al., 2017, faster reading times are observed at the verb are in the agreement-attraction sentence above compared to the equally ungrammatical sentence "The key to the cabinet are on the table". One explanation for this facilitation effect is the feature percolation account: the plural feature on cabinets percolates up to the head noun key, leading to the illusion. An alternative account is in terms of cue-based retrieval (Lewis & Vasishth, 2005), which assumes that the non-subject noun cabinets is misretrieved due to a partial feature-match when a dependency completion process at the auxiliary initiates a memory access for a subject with plural marking. We present evidence for yet another explanation for the observed…
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Taxonomy
TopicsTopic Modeling · Neurobiology of Language and Bilingualism · Natural Language Processing Techniques
MethodsContext Aggregated Bi-lateral Network for Semantic Segmentation
