Journal of Vision Cover Image for Volume 24, Issue 10
September 2024
Volume 24, Issue 10
Open Access
Vision Sciences Society Annual Meeting Abstract  |   September 2024
A high fidelity quantification of the time course of learning consolidation from a massive visual search dataset
Author Affiliations & Notes
  • Patrick Cox
    Lehigh University
  • Chloe Callahan- Flintoft
    United States Army Research Laboratory
  • Michelle Kramer
    Transportation Security Administration
  • Stephen Mitroff
    The George Washington University
  • Dwight Kravitz
    The George Washington University
  • Footnotes
    Acknowledgements  US Army Research Laboratory Cooperative Agreements #W911NF-21-2-0179, #W911NF-23-2-0210, & #W911NF-23-2-0097; IC Postdoc Research Fellowship Program administered by ORISE through an interagency agreement between the DOE and the ODNI
Journal of Vision September 2024, Vol.24, 1453. doi:https://doi.org/10.1167/jov.24.10.1453
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      Patrick Cox, Chloe Callahan- Flintoft, Michelle Kramer, Stephen Mitroff, Dwight Kravitz; A high fidelity quantification of the time course of learning consolidation from a massive visual search dataset. Journal of Vision 2024;24(10):1453. https://doi.org/10.1167/jov.24.10.1453.

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      © ARVO (1962-2015); The Authors (2016-present)

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Abstract

Visual search behavior adapts to the statistics of local contexts, as shown in cognitive effects like priming (e.g., Maljkovic & Nakayama, 1994), statistical learning (e.g., Geng & Behrmann, 2005), contextual cueing (e.g., Chun & Jiang, 1998), and selection history (e.g., Awh et al., 2012). Previous work has described a general evidence accumulation function that may underlie such learned adaptations in behavior across a range of features (Kramer et al., 2022), but questions remain about the time course of the consolidation of this learning. Here we used a massive dataset (~15.7 million users, ~3.8 billion trials) of human behavioral data from a mobile app (Airport Scanner, Kedlin Co.) to quantify the consolidation of learning in a visual search task over a range of time delays, and to describe the impact of sleep during the consolidation period. The size of this dataset allowed for an extremely high fidelity characterization of the time course of consolidation from seconds to days with a high degree of temporal precision. Linear modeling of the effects of prior experience (proportion of trials containing a target), time delay (amount of time since the last block of search) and their interaction showed significant main effects of prior experience and time delay, as well as a complex nonlinear interaction for all of our dependent variables (hit rate, target present correct response time, correct rejection rate, target absent correct response time). A secondary analysis on the effect of sleep on visual search performance revealed main effects of sleep on search accuracy but no interaction of sleep with accumulation of evidence about target prevalence. These characterizations of the temporal dynamics of consolidation behavior provide much needed constraints on hypotheses about the myriad of neural mechanisms underlying learning and their characteristic time courses.

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