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Journal Article

Coherence-driven resolution of referential ambiguity: A computational model

MPS-Authors

Frank,  Stefan L.
Interfacultaire Werkgroep Taal- en Spraakgedrag, external;
Center for Language Studies, external;
Other Research, MPI for Psycholinguistics, Max Planck Society;

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Vonk,  Wietske
Language Production Group Levelt, MPI for Psycholinguistics, Max Planck Society;
Other Research, MPI for Psycholinguistics, Max Planck Society;

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frank_2007_coherence.pdf
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Citation

Frank, S. L., Koppen, M., Noordman, L. G. M., & Vonk, W. (2007). Coherence-driven resolution of referential ambiguity: A computational model. Memory & Cognition, 35(6), 1307-1322.


Cite as: https://hdl.handle.net/11858/00-001M-0000-0013-1D20-D
Abstract
We present a computational model that provides a unified account of inference, coherence, and disambiguation. It simulates how the build-up of coherence in text leads to the knowledge-based resolution of referential ambiguity. Possible interpretations of an ambiguity are represented by centers of gravity in a high-dimensional space. The unresolved ambiguity forms a vector in the same space. This vector is attracted by the centers of gravity, while also being affected by context information and world knowledge. When the vector reaches one of the centers of gravity, the ambiguity is resolved to the corresponding interpretation. The model accounts for reading time and error rate data from experiments on ambiguous pronoun resolution and explains the effects of context informativeness, anaphor type, and processing depth. It shows how implicit causality can have an early effect during reading. A novel prediction is that ambiguities can remain unresolved if there is insufficient disambiguating information.