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Inter-trial effects in visual pop-out search: Factorial comparison of Bayesian updating models

Fredrik Allenmark, Hermann J. Müller, View ORCID ProfileZhuanghua Shi
doi: https://doi.org/10.1101/353003
Fredrik Allenmark
1Experimental Psychology, Department of Psychology, LMU Munich, Germany
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Hermann J. Müller
1Experimental Psychology, Department of Psychology, LMU Munich, Germany
2Department of Psychological Science, Birkbeck College (University of London), London, UK
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Zhuanghua Shi
1Experimental Psychology, Department of Psychology, LMU Munich, Germany
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Abstract

Many previous studies on visual search have reported inter-trial effects, that is, observers respond faster when some target property, such as a defining feature or dimension, or the response associated with the target repeats versus changes across consecutive trial episodes. However, what processes drive these inter-trial effects is still controversial. Here, we investigated this question using a combination of Bayesian modeling of belief updating and evidence accumulation modeling in perceptual decision-making. In three visual singleton (‘pop-out’) search experiments, we explored how the probability of the response-critical states of the search display (e.g., target presence/absence) and the repetition/switch of the target-defining dimension (color/ orientation) affect reaction time distributions. The results replicated the mean reaction time (RT) inter-trial and dimension repetition/switch effects that have been reported in previous studies. Going beyond this, to uncover the underlying mechanisms, we used the Drift-Diffusion Model (DDM) and the Linear Approach to Threshold with Ergodic Rate (LATER) model to explain the RT distributions in terms of decision bias (starting point) and information processing speed (evidence accumulation rate). We further investigated how these different aspects of the decision-making process are affected by different properties of stimulus history, giving rise to dissociable inter-trial effects. We approached this question by (i) combining each perceptual decision making model (DDM or LATER) with different updating models, each specifying a plausible rule for updating of either the starting point or the rate, based on stimulus history, and (ii) comparing every possible combination of trial-wise updating mechanism and perceptual decision model in a factorial model comparison. Consistently across experiments, we found that the (recent) history of the response-critical property influences the initial decision bias, while repetition/switch of the target-defining dimension affects the accumulation rate, likely reflecting an implicit ‘top-down’ modulation process. This provides strong evidence of a disassociation between response- and dimension-based inter-trial effects.

Acknowledgements

This work was supported by German research foundation DFG MU773/16-1 to HJM and DFG SH166/3-1 to ZS. The authors would like to thank Lena Schröder and Kerstin Wenzel for recruiting and testing participants, two anonymous reviewers for their insightful comments on an earlier version of this paper, and Uta Noppeney for helpful discussions.

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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Posted June 21, 2018.
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Inter-trial effects in visual pop-out search: Factorial comparison of Bayesian updating models
Fredrik Allenmark, Hermann J. Müller, Zhuanghua Shi
bioRxiv 353003; doi: https://doi.org/10.1101/353003
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Inter-trial effects in visual pop-out search: Factorial comparison of Bayesian updating models
Fredrik Allenmark, Hermann J. Müller, Zhuanghua Shi
bioRxiv 353003; doi: https://doi.org/10.1101/353003

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