Literature DB >> 27135040

What do we mean by prediction in language comprehension?

Gina R Kuperberg1, T Florian Jaeger2.   

Abstract

We consider several key aspects of prediction in language comprehension: its computational nature, the representational level(s) at which we predict, whether we use higher level representations to predictively pre-activate lower level representations, and whether we 'commit' in any way to our predictions, beyond pre-activation. We argue that the bulk of behavioral and neural evidence suggests that we predict probabilistically and at multiple levels and grains of representation. We also argue that we can, in principle, use higher level inferences to predictively pre-activate information at multiple lower representational levels. We also suggest that the degree and level of predictive pre-activation might be a function of the expected utility of prediction, which, in turn, may depend on comprehenders' goals and their estimates of the relative reliability of their prior knowledge and the bottom-up input. Finally, we argue that all these properties of language understanding can be naturally explained and productively explored within a multi-representational hierarchical actively generative architecture whose goal is to infer the message intended by the producer, and in which predictions play a crucial role in explaining the bottom-up input.

Entities:  

Keywords:  generative model; language comprehension; prediction error; probabilistic; surprisal

Year:  2015        PMID: 27135040      PMCID: PMC4850025          DOI: 10.1080/23273798.2015.1102299

Source DB:  PubMed          Journal:  Lang Cogn Neurosci        ISSN: 2327-3798            Impact factor:   2.331


  168 in total

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  122 in total

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