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  1. Evaluating (and Improving) the Correspondence Between Deep Neural Networks and Human Representations.Joshua C. Peterson, Joshua T. Abbott & Thomas L. Griffiths - 2018 - Cognitive Science 42 (8):2648-2669.
    Decades of psychological research have been aimed at modeling how people learn features and categories. The empirical validation of these theories is often based on artificial stimuli with simple representations. Recently, deep neural networks have reached or surpassed human accuracy on tasks such as identifying objects in natural images. These networks learn representations of real‐world stimuli that can potentially be leveraged to capture psychological representations. We find that state‐of‐the‐art object classification networks provide surprisingly accurate predictions of human similarity judgments for (...)
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  • Scene context is predictive of unconstrained object similarity judgments.Caterina Magri, Eric Elmoznino & Michael F. Bonner - 2023 - Cognition 239 (C):105535.
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  • Dimensions underlying human understanding of the reachable world.Emilie L. Josephs, Martin N. Hebart & Talia Konkle - 2023 - Cognition 234 (C):105368.
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  • Spatial relation categorization in infants and deep neural networks.Guy Davidson, A. Emin Orhan & Brenden M. Lake - 2024 - Cognition 245 (C):105690.
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