Overcoming bias in representational similarity analysis
Roberto Viviani

TL;DR
This paper proposes a partial correlation method to reduce bias in representational similarity analysis (RSA) for functional imaging, addressing confounds from non-orthogonal design matrices and autocorrelation, with demonstrated effectiveness on real data.
Contribution
It introduces a data-driven partial correlation approach to mitigate bias in RSA, accounting for autocorrelation and non-orthogonality, and provides publicly available software implementation.
Findings
Partial correlation reduces bias in RSA.
Local bias impact is minor in real data.
Limitations arise where autocorrelation diverges from estimates.
Abstract
Representational similarity analysis (RSA) is a multivariate technique to investigate cortical representations of objects or constructs. While avoiding ill-posed matrix inversions that plague multivariate approaches in the presence of many outcome variables, it suffers from the confound arising from the non-orthogonality of the design matrix. Here, a partial correlation approach will be explored to adjust for this source of bias by partialling out this confound in the context of the searchlight method for functional imaging datasets. A formal analysis will show the existence of a dependency of this confound on the temporal correlation model of the sequential observations, motivating a data-driven approach that avoids the problem of misspecification of this model. However, where the autocorrelation locally diverges from its volume estimate, bias may be difficult to control for exactly,…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Face Recognition and Perception · Advanced Neuroimaging Techniques and Applications
