Disambiguating the role of noise correlations when decoding neural populations together
Hugo Gabriel Eyherabide

TL;DR
This paper investigates the validity of two measures of information loss due to noise correlations in neural decoding, revealing limitations of one measure and proposing improved estimation methods to enhance decoding strategies.
Contribution
The study clarifies the conditions under which the measure ΔI^{DL} is flawed and introduces better estimates for noise correlation effects in neural decoding.
Findings
ΔI^{DL} can overestimate noise correlation importance
Differences in measures depend on tie-breaking rules and theoretical limitations
Proposed estimates improve decoding algorithm design and resource efficiency
Abstract
One of the most controversial problems in neural decoding is quantifying the information loss caused by ignoring noise correlations during optimal brain computations. For more than a decade, the measure here called has been believed exact. However, we have recently shown that it can exceed the information loss caused by optimal decoders constructed ignoring noise correlations. Unfortunately, the different information notions underlying and , and the putative rigorous information-theoretical derivation of , both render unclear whether those findings indicate either flaws in or major departures from traditional relations between information and decoding. Here we resolve this paradox and prove that, under certain conditions, observing implies that $…
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Taxonomy
TopicsNeural dynamics and brain function · Neural Networks and Applications · stochastic dynamics and bifurcation
