Selection entropy: The information hidden within neuronal patterns
Article 2023 en
Authors
EF
Erik D. Fagerholm
ZD
Zalina Dezhina
RM
Rosalyn Moran
Abstract
1 min read
Boltzmann-Shannon entropy is a measure of the information hidden within multiple indistinguishable rearrangements of a single system. An alternative metric (``selection entropy'') is derived, which instead quantifies the hidden information associated with indistinguishable selections that can take place between systems. Selection entropy is shown to be more sensitive than the KL-divergence (relative entropy) in the context of neuroimaging time series analysis.
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