Hidden Layers in Perceptual Learning
Autor: | Gad Cohen, Daphna Weinshall |
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Rok vydání: | 2017 |
Předmět: |
Visual perception
Artificial neural network business.industry Computer science 05 social sciences Multi-task learning Context (language use) Machine learning computer.software_genre 050105 experimental psychology Visualization 03 medical and health sciences 0302 clinical medicine Perceptual learning Generalization (learning) 0501 psychology and cognitive sciences Artificial intelligence business Knowledge transfer computer 030217 neurology & neurosurgery |
Zdroj: | CVPR |
DOI: | 10.1109/cvpr.2017.568 |
Popis: | Studies in visual perceptual learning investigate the way human performance improves with practice, in the context of relatively simple (and therefore more manageable) visual tasks. Building on the powerful tools currently available for the training of Convolution Neural Networks (CNN), networks whose original architecture was inspired by the visual system, we revisited some of the open computational questions in perceptual learning. We first replicated two representative sets of perceptual learning experiments by training a shallow CNN to perform the relevant tasks. These networks qualitatively showed most of the characteristic behavior observed in perceptual learning, including the hallmark phenomena of specificity and its various manifestations in the forms of transfer or partial transfer, and learning enabling. We next analyzed the dynamics of weight modifications in the networks, identifying patterns which appeared to be instrumental for the transfer (or generalization) of learned skills from one task to another in the simulated networks. These patterns may identify ways by which the domain of search in the parameter space during network re-training can be significantly reduced, thereby accomplishing knowledge transfer. |
Databáze: | OpenAIRE |
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