How to get statistically significant effects in any ERP experiment (and why you shouldn't)

Volume: 54, Issue: 1, Pages: 146 - 157
Published: Dec 20, 2016
Abstract
ERP experiments generate massive datasets, often containing thousands of values for each participant, even after averaging. The richness of these datasets can be very useful in testing sophisticated hypotheses, but this richness also creates many opportunities to obtain effects that are statistically significant but do not reflect true differences among groups or conditions (bogus effects). The purpose of this paper is to demonstrate how common...
Paper Details
Title
How to get statistically significant effects in any ERP experiment (and why you shouldn't)
Published Date
Dec 20, 2016
Volume
54
Issue
1
Pages
146 - 157
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