New Results
Multivariate EEG analyses support high-resolution tracking of feature-based attentional selection
View ORCID ProfileJohannes Jacobus Fahrenfort, Anna Grubert, Christian N. L. Olivers, Martin Eimer
doi: https://doi.org/10.1101/082818
Johannes Jacobus Fahrenfort
1Department of Experimental and Applied Psychology, Vrije Universiteit, The Netherlands
Anna Grubert
2Department of Psychology, Durham University, UK
Christian N. L. Olivers
1Department of Experimental and Applied Psychology, Vrije Universiteit, The Netherlands
Martin Eimer
3Department of Psychological Sciences, Birkbeck, University of London, UK
Article usage
Posted November 02, 2016.
Multivariate EEG analyses support high-resolution tracking of feature-based attentional selection
Johannes Jacobus Fahrenfort, Anna Grubert, Christian N. L. Olivers, Martin Eimer
bioRxiv 082818; doi: https://doi.org/10.1101/082818
Subject Area
Subject Areas
- Biochemistry (11573)
- Bioengineering (8623)
- Bioinformatics (28875)
- Biophysics (14805)
- Cancer Biology (11944)
- Cell Biology (17170)
- Clinical Trials (138)
- Developmental Biology (9307)
- Ecology (14022)
- Epidemiology (2067)
- Evolutionary Biology (18129)
- Genetics (12148)
- Genomics (16619)
- Immunology (11712)
- Microbiology (27702)
- Molecular Biology (11401)
- Neuroscience (60106)
- Paleontology (448)
- Pathology (1849)
- Pharmacology and Toxicology (3184)
- Physiology (4878)
- Plant Biology (10279)
- Synthetic Biology (2849)
- Systems Biology (7291)
- Zoology (1619)