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Degrees of algorithmic equivalence between the brain and its DNN models

Philippe G. Schyns, Lukas Snoek, Christoph Daube

2022Trends in Cognitive Sciences41 citationsDOIOpen Access PDF

Abstract

Deep neural networks (DNNs) have become powerful and increasingly ubiquitous tools to model human cognition, and often produce similar behaviors. For example, with their hierarchical, brain-inspired organization of computations, DNNs apparently categorize real-world images in the same way as humans do. Does this imply that their categorization algorithms are also similar? We have framed the question with three embedded degrees that progressively constrain algorithmic similarity evaluations: equivalence of (i) behavioral/brain responses, which is current practice, (ii) the stimulus features that are processed to produce these outcomes, which is more constraining, and (iii) the algorithms that process these shared features, the ultimate goal. To improve DNNs as models of cognition, we develop for each degree an increasingly constrained benchmark that specifies the epistemological conditions for the considered equivalence.

Topics & Concepts

CategorizationCognitionEquivalence (formal languages)PsychologyComputationCognitive scienceStimulus (psychology)Similarity (geometry)Deep neural networksComputer scienceComputational modelArtificial neural networkCognitive psychologyArtificial intelligenceNeuroscienceAlgorithmMathematicsDiscrete mathematicsImage (mathematics)Face Recognition and PerceptionNeural dynamics and brain functionEEG and Brain-Computer Interfaces