4.2 Article

Attentional suppression is in place before display onset

Related references

Note: Only part of the references are listed.
Article Psychology

Statistical learning of spatiotemporal regularities dynamically guides visual attention across space

Zhenzhen Xu et al.

Summary: This study explores how combined spatiotemporal regularities guide visual attention and suggests that implicitly learned spatiotemporal regularities can dynamically guide visual attention towards probable target locations.

ATTENTION PERCEPTION & PSYCHOPHYSICS (2023)

Article Psychology

Proactive Enhancement and Suppression Elicited by Statistical Regularities in Visual Search

Changrun Huang et al.

Summary: This study investigated the impact of simultaneous statistical learning of target and distractor regularities on attentional selection. The results showed that observers are able to learn the regularities present in the search display and optimize their selection priorities accordingly.

JOURNAL OF EXPERIMENTAL PSYCHOLOGY-HUMAN PERCEPTION AND PERFORMANCE (2022)

Review Behavioral Sciences

What to expect where and when: how statistical learning drives visual selection

Jan Theeuwes et al.

Summary: Through visual statistical learning, attentional priority settings can optimally adjust to regularities in the environment, without intention and conscious awareness.

TRENDS IN COGNITIVE SCIENCES (2022)

Article Psychology

Statistical Learning Affects the Time Courses of Salience-Driven and Goal-Driven Selection

Changrun Huang et al.

Summary: The study found that the statistical regularity of the distractor location affects visual selection early on, modulating the time courses associated with both salience-driven and goal-driven selection. These results suggest that statistical learning induces a continuous bias in visual selection beyond salience-driven and goal-driven control.

JOURNAL OF EXPERIMENTAL PSYCHOLOGY-HUMAN PERCEPTION AND PERFORMANCE (2021)

Article Behavioral Sciences

Post-capture processes contribute to statistical learning of distractor locations in visual search

Marian Sauter et al.

Summary: People can improve task performance efficiency by learning to suppress salient distractors that occur frequently at particular locations. Eye-movement studies show that reducing oculomotor capture rate is a significant factor, while there is controversy regarding the role of rapid disengagement as well.

CORTEX (2021)

Article Behavioral Sciences

Neural mechanisms underlying distractor inhibition on the basis of feature and/or spatial expectations

Dirk van Moorselaar et al.

Summary: Research suggests that inhibition of distracting information relies heavily on expectations derived from past experience, and both distractor feature and location regularities contribute to distractor suppression. While observers are sensitive to regularities across longer time scales, the observed effects largely reflect intertrial repetition.

CORTEX (2021)

Article Psychology

Attentional Suppression in Time and Space

Zhenzhen Xu et al.

Summary: Participants can learn to suppress specific locations of distracting objects during particular moments in time, suggesting that the spatial priority map of attentional selection is dynamically adjusted throughout the trial.

JOURNAL OF EXPERIMENTAL PSYCHOLOGY-HUMAN PERCEPTION AND PERFORMANCE (2021)

Article Psychology, Experimental

Modulations of Saliency Signals at Two Hierarchical Levels of Priority Computation Revealed by Spatial Statistical Distractor Learning

Heinrich R. Liesefeld et al.

Summary: The study demonstrates experience-driven top-down modulations of saliency signals at the overall-priority and dimension-specific levels that do not reach down to the specific distractor features. The findings suggest that participants rely on purely space-based suppression rather than feature-specific suppression when faced with distractors in visual search tasks.

JOURNAL OF EXPERIMENTAL PSYCHOLOGY-GENERAL (2021)

Review Psychology, Mathematical

Guided Search 6.0: An updated model of visual search

Jeremy M. Wolfe

Summary: This paper introduces the Guided Search 6.0 (GS6) model, which includes five sources of preattentive information such as top-down and bottom-up feature guidance, and three types of functional visual fields (FVFs). GS6 combines asynchronous diffusion and a quitting signal to simulate the basic patterns of response time and error data from a range of search experiments.

PSYCHONOMIC BULLETIN & REVIEW (2021)

Article Psychology, Mathematical

Proactive distractor suppression elicited by statistical regularities in visual search

Changrun Huang et al.

Summary: The study explored whether distractors presented more frequently at one location are subject to proactive spatial suppression. The results indicate that through statistical learning, locations likely to contain distractors are proactively suppressed.

PSYCHONOMIC BULLETIN & REVIEW (2021)

Article Neurosciences

Preparatory Template Activation during Search for Alternating Targets

Anna Grubert et al.

JOURNAL OF COGNITIVE NEUROSCIENCE (2020)

Article Psychology

Independent effects of statistical learning and top-down attention

Ya Gao et al.

ATTENTION PERCEPTION & PSYCHOPHYSICS (2020)

Article Behavioral Sciences

Statistical learning in the absence of explicit top-down attention

Dock Duncan et al.

CORTEX (2020)

Article Psychology

Statistical regularities bias overt attention

Benchi Wan et al.

ATTENTION PERCEPTION & PSYCHOPHYSICS (2019)

Article Neurosciences

Anticipatory Distractor Suppression Elicited by Statistical Regularities in Visual Search

Benchi Wang et al.

JOURNAL OF COGNITIVE NEUROSCIENCE (2019)

Article Psychology

Evidence for Second-Order Singleton Suppression Based on Probabilistic Expectations

Bo-Yeong Won et al.

JOURNAL OF EXPERIMENTAL PSYCHOLOGY-HUMAN PERCEPTION AND PERFORMANCE (2019)

Review Psychology, Multidisciplinary

Goal-driven, stimulus-driven, and history-driven selection

Jan Theeuwes

CURRENT OPINION IN PSYCHOLOGY (2019)

Article Psychology

How to inhibit a distractor location? Statistical learning versus active, top-down suppression

Benchi Wang et al.

ATTENTION PERCEPTION & PSYCHOPHYSICS (2018)

Article Psychology

Statistical regularities modulate attentional capture independent of search strategy

Benchi Wang et al.

ATTENTION PERCEPTION & PSYCHOPHYSICS (2018)

Article Psychology

Statistical Regularities Modulate Attentional Capture

Benchi Wang et al.

JOURNAL OF EXPERIMENTAL PSYCHOLOGY-HUMAN PERCEPTION AND PERFORMANCE (2018)

Article Neurosciences

The Time Course of Target Template Activation Processes during Preparation for Visual Search

Anna Grubert et al.

JOURNAL OF NEUROSCIENCE (2018)

Article Psychology

Suppression of overt attentional capture by salient-but-irrelevant color singletons

Nicholas Gaspelin et al.

ATTENTION PERCEPTION & PSYCHOPHYSICS (2017)

Article Computer Science, Interdisciplinary Applications

lmerTest Package: Tests in Linear Mixed Effects Models

Alexandra Kuznetsova et al.

JOURNAL OF STATISTICAL SOFTWARE (2017)

Article Ecology

SIMR: an R package for power analysis of generalized linear mixed models by simulation

Peter Green et al.

METHODS IN ECOLOGY AND EVOLUTION (2016)

Article Computer Science, Interdisciplinary Applications

Fitting Linear Mixed-Effects Models Using lme4

Douglas Bates et al.

JOURNAL OF STATISTICAL SOFTWARE (2015)

Article Psychology, Multidisciplinary

Direct Evidence for Active Suppression of Salient-but-Irrelevant Sensory Inputs

Nicholas Gaspelin et al.

PSYCHOLOGICAL SCIENCE (2015)

Article Linguistics

Random effects structure for confirmatory hypothesis testing: Keep it maximal

Dale J. Barr et al.

JOURNAL OF MEMORY AND LANGUAGE (2013)

Article Psychology, Mathematical

Active suppression after involuntary capture of attention

Risa Sawaki et al.

PSYCHONOMIC BULLETIN & REVIEW (2013)

Review Behavioral Sciences

Top-down versus bottom-up attentional control: a failed theoretical dichotomy

Edward Awh et al.

TRENDS IN COGNITIVE SCIENCES (2012)

Article Psychology, Mathematical

OpenSesame: An open-source, graphical experiment builder for the social sciences

Sebastiaan Mathot et al.

BEHAVIOR RESEARCH METHODS (2012)

Article Psychology

Spatial probability as an attentional cue in visual search

JJ Geng et al.

PERCEPTION & PSYCHOPHYSICS (2005)