Inferring exemplar discriminability in brain representations
Hamed Nili, Alexander Walther, Arjen Alink, Nikolaus Kriegeskorte

TL;DR
This paper evaluates various statistical tests for assessing how well brain activity patterns discriminate among stimuli, proposing more sensitive methods and validating their effectiveness through simulations and real data analysis.
Contribution
It introduces and compares a range of statistical tests for exemplar discriminability in brain data, highlighting more powerful alternatives to commonly used methods.
Findings
Mahalanobis-based tests outperform correlation-based tests in sensitivity.
The popular EDI t-test is valid despite normality assumptions.
Simulations confirm the superiority of certain multivariate distance measures.
Abstract
Representational distinctions within categories are important in all perceptual modalities and also in cognitive and motor representations. Recent pattern-information studies of brain activity have used condition-rich designs to sample the stimulus space more densely. To test whether brain response patterns discriminate among a set of stimuli (e.g. exemplars within a category) with good sensitivity, we can pool statistical evidence over all pairwise comparisons. Here we describe a wide range of statistical tests of exemplar discriminability and assess the validity (specificity) and power (sensitivity) of each test. The tests include previously used and novel, parametric and nonparametric tests, which treat subject as a random or fixed effect, and are based on different dissimilarity measures, different test statistics, and different inference procedures. We use simulated and real data…
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Taxonomy
TopicsNeural Networks and Applications · Neural dynamics and brain function · Visual perception and processing mechanisms
