Full-dimensional characterisation of time-warped spike-time stimulus-response distribution geometries
Characterising the representation of sensory stimuli in the brain is a fundamental scientific endeavor, which can illuminate principles of information coding. Most characterizations reduce the dimensionality of neural data by converting spike trains to firing rates or binned spike counts, applying e...
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Zusammenfassung: | Characterising the representation of sensory stimuli in the brain is a
fundamental scientific endeavor, which can illuminate principles of information
coding. Most characterizations reduce the dimensionality of neural data by
converting spike trains to firing rates or binned spike counts, applying
explicitly named methods of ``dimensionality reduction'', or collapsing
trial-to-trial variability. Characterisation of the full-dimensional geometry
of timing-based representations may provide unexpected insights into how
complex high-dimensional information is encoded. Recent research shows that the
distribution of representations elicited over trials of a single stimulus can
be geometrically characterized without the application of dimensionality
reduction, maintaining the temporal spiking information of individual neurons
in a cell assembly and illuminating rich geometric structure. We extend these
results, showing that precise spike time patterns for larger cell assemblies
are time-warped (i.e. stretched or compressed) on each trial. Moreover, by
geometrically characterizing distributions of large spike time patterns, our
analysis supports the hypothesis that the degree to which a spike time pattern
is time-warped depends on the cortical area's background activity level on a
single trial. Finally, we suggest that the proliferation of large
electrophysiology datasets and the increasing concentration of ``neural
geometrists'', creates ideal conditions for characterization of
full-dimensional spike time representations, in complement to dimensionality
reduction approaches. |
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DOI: | 10.48550/arxiv.2401.11784 |