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An Operant Intra-/Extra-dimensional Set-shift Task for Mice
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Distracted by Previous Experience: Integrating Selection History, Current Task Demands and Saliency in an Algorithmic

Neda Meibodi1, Hossein Abbasi1,2, Anna Schubö1

  • 1Department of Psychology, Philipps-Universität Marburg, Gutenbergstraße 18, Marburg, 35037 Hessen Germany.

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|July 16, 2026
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Summary

Previous learning biases visual attention. Our model quantitatively predicts how stimulus, goal, and history influence attention, matching human reaction time data and confirming selection history effects.

Keywords:
Ex-Gaussian distributionFeature integrated theoryIntegrated priority mapSelection historySelf-information maximizationVisual attention modeling

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Area of Science:

  • Cognitive psychology
  • Computational neuroscience
  • Visual attention research

Background:

  • Attention is influenced by prior learning and experience, leading to selection history bias.
  • Existing models often focus on stimulus-driven or goal-driven control, but the interplay with learned biases is complex.

Purpose of the Study:

  • To develop an algorithmic-level model predicting how stimulus-driven saliency, goal-driven control, and selection history interact to guide visual attention.
  • To quantitatively assess the contribution of selection history to attentional bias using a novel computational approach.

Main Methods:

  • Developed an algorithmic model integrating saliency maps, a history map encoding learning, and task control parameters.
  • Utilized coded features instead of image pixels for model input.
  • Tested the model against reaction time (RT) data from a psychophysical experiment.

Main Results:

  • The model accurately predicted reaction time distribution parameters using an integrated priority map.
  • Analysis of map weights confirmed the significant influence of selection history on attention guidance.
  • The model captured individual differences in RTs and response probabilities, outperforming reduced models.

Conclusions:

  • Integrating stimulus saliency, task goals, and selection history is crucial for quantitatively describing human visual attention.
  • Selection history demonstrably biases attention, and its effects can be computationally modeled.
  • Adding intertrial effects further improved the model's predictive accuracy, highlighting lingering biases.