4.6 Article

Bayesian multi-level modelling for predicting single and double feature visual search

期刊

CORTEX
卷 171, 期 -, 页码 178-193

出版社

ELSEVIER MASSON, CORP OFF
DOI: 10.1016/j.cortex.2023.10.014

关键词

Visual search; Efficient search; Parallel processing

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This study examines the relationship between search slopes and search efficiency in visual search tasks, introduces the Target Contrast Signal (TCS) Theory, and extends it to a Bayesian multi-level framework. The findings demonstrate that TCS can predict data well, but distinguishing between contrast combination models proves to be difficult.
Performance in visual search tasks is frequently summarised by search slopes -the additional cost in reaction time for each additional distractor. While search tasks with a shallow search slopes are termed efficient (pop-out, parallel, feature), there is no clear dichotomy between efficient and inefficient (serial, conjunction) search. Indeed, a range of search slopes are observed in empirical data. The Target Contrast Signal (TCS) Theory is a rare example of quantitative model that attempts to predict search slopes for efficient visual search. One study using the TCS framework has shown that the search slope in a double-feature search (where the target differs in both colour and shape from the dis-tractors) can be estimated from the slopes of the associated single-feature searches. This estimation is done using a contrast combination model, and a collinear contrast integra-tion model was shown to outperform other options. In our work, we extend TCS to a Bayesian multi-level framework. We investigate modelling using normal and shifted-lognormal distributions, and show that the latter allows for a better fit to previously published data. We run a new fully within-subjects experiment to attempt to replicate the key original findings, and show that overall, TCS does a good job of predicting the data. However, we do not replicate the finding that the collinear combination model out-performs the other contrast combination models, instead finding that it may be difficult to conclusively distinguish between them. (c) 2023 The Author(s). Published by Elsevier Ltd. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).

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