Journal article

Characterizing the Time Course of Decision-Making in Change Detection

AG Blunden, DA Hammond, PDL Howe, DR Little

Psychological Review | AMER PSYCHOLOGICAL ASSOC | Published : 2021

Abstract

We propose a novel modeling framework for characterizing the time course of change detection based on information held in visual short-term memory (VSTM). Specifically, we seek to answer whether change detection is better captured by a first-order integration model, in which information is pooled from each location, or a second-order integration model, in which each location is processed independently. We diagnose whether change detection across locations proceeds in serial or parallel and how processing is affected by the stopping rule (i.e., detecting any change vs. detecting all changes; Experiment 1) and how the efficiency of detection is affected by the number of changes in the display ..

View full abstract

Grants

Awarded by Australian Research Council


Funding Acknowledgements

We would like to thank Daniele Martinie for assistance in data collection and Robert De Lisle for assistance with programming. Portions of this article were completed as part of a PhD thesis by Anthea Blunden and as part of an Honours thesis by Dylan Hammond. This work was supported by ARC grant DP160102360 awarded to Daniel Little and by an Australian Government Research Training Program Scholarship awarded to Anthea Blunden. We also thank Philip Smith and Simon Lilburn for helpful discussions on this work, and Peter Shepherdson for many helpful suggestions including the idea for the MAX-first model.