Towards a model of predictive processing of Implicit Causality
Oliver Bott & Torgrim Solstad
Bielefeld University
Implicit Causality (IC) verbs constitute a central topic in research on prediction in natural language processing. Selecting for two animate arguments, IC verbs display a strong preference for an explanation focusing on one argument:
(1) Mary fascinated John because … she was very clever. fascinate: subject bias
(2) Mary congratulated John because … he won the competition. congratulate: object bias
The predictive nature of IC is still insufficiently understood, however, as witnessed by the recurring debate on integration vs. focusing/prediction. Key questions include: What is predicted? A referent, a particular realization of the referent (she/Mary) or a type of explanation [1; 10]? Furthermore, what triggers the prediction: lexical semantics or world knowledge [2; 8; 10]? And finally, what is the processing profile of IC [3]?
Based on a formal theory of IC [1; 10], results from experimental research [3; 5; 9] and recent models of predictive processing [6; 7], we propose a comprehensive framework for the processing of IC. Crucially, we consider in detail the relation between the nature of what is predicted (the predictee [8]) and the properties of particular linguistic expressions such as pronouns that may be taken to (in)validate predictions. Based on previous research, we also evaluate the range of top-down and bottom-up processes: Which linguistic levels are involved and how do they interact? Our study shows that a closer investigation of the relation between predictees and (in)validators of predictions in general may contribute towards a better understanding of – and potentially more precise models of – language-based prediction.
References
- 1. Bott, Oliver and Torgrim Solstad (2014): "From verbs to discourse – a novel account of implicit causality". In B. Hemforth, B. Mertins, & C. Fabricius-Hansen (Eds.), Psycholinguistic approaches to meaning and understanding across languages, 213–251. Springer.
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- 10. Solstad, Torgrim and Oliver Bott (2022): On the nature of implicit causality and consequentiality: the case of psychological verbs. Language, Cognition and Neuroscience 37(10), 1311–1340