Logic as Marr's computational level: four case studies

Authors
Publication date 04-2015
Journal Topics in Cognitive Science
Event Annual Conference of the Cognitive Science Society
Volume | Issue number 7 | 2
Pages (from-to) 287-298
Organisations
  • Interfacultary Research - Institute for Logic, Language and Computation (ILLC)
Abstract
We sketch four applications of Marr's levels-of-analysis methodology to the relations between logic and experimental data in the cognitive neuroscience of language and reasoning. The first part of the paper illustrates the explanatory power of computational level theories based on logic. We show that a Bayesian treatment of the suppression task in reasoning with conditionals is ruled out by EEG data, supporting instead an analysis based on defeasible logic. Further, we describe how results from an EEG study on temporal prepositions can be reanalyzed using formal semantics, addressing a potential confound. The second part of the article demonstrates the predictive power of logical theories drawing on EEG data on processing progressive constructions and on behavioral data on conditional reasoning in people with autism. Logical theories can constrain processing hypotheses all the way down to neurophysiology, and conversely neuroscience data can guide the selection of alternative computational level models of cognition.
Document type Article
Note In special issue: Thirty years after Marr's Vision: Levels of analysis in Cognitive Science; Edited by David Peebles and Richard P. Cooper; Best of Papers from the Cognitive Science Society Annual Conference
Language English
Published at https://doi.org/10.1111/tops.12125
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