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Computing a human-like reaction time metric from stable recurrent vision models

Authors :
Goetschalckx, Lore
Govindarajan, Lakshmi Narasimhan
Ashok, Alekh Karkada
Ahuja, Aarit
Sheinberg, David L.
Serre, Thomas
Publication Year :
2023

Abstract

The meteoric rise in the adoption of deep neural networks as computational models of vision has inspired efforts to "align" these models with humans. One dimension of interest for alignment includes behavioral choices, but moving beyond characterizing choice patterns to capturing temporal aspects of visual decision-making has been challenging. Here, we sketch a general-purpose methodology to construct computational accounts of reaction times from a stimulus-computable, task-optimized model. Specifically, we introduce a novel metric leveraging insights from subjective logic theory summarizing evidence accumulation in recurrent vision models. We demonstrate that our metric aligns with patterns of human reaction times for stimulus manipulations across four disparate visual decision-making tasks spanning perceptual grouping, mental simulation, and scene categorization. This work paves the way for exploring the temporal alignment of model and human visual strategies in the context of various other cognitive tasks toward generating testable hypotheses for neuroscience. Links to the code and data can be found on the project page: https://serre-lab.github.io/rnn_rts_site.<br />Comment: Published at NeurIPS 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2306.11582
Document Type :
Working Paper