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arxiv: 1703.05414 · v1 · pith:PRNDBUHAnew · submitted 2017-03-15 · 🧬 q-bio.NC · physics.data-an

A Multitaper, Causal Decomposition for Stochastic, Multivariate Time Series: Application to High-Frequency Calcium Imaging Data

classification 🧬 q-bio.NC physics.data-an
keywords seriestimecausalinformationmultivariatedatadecompositionimaging
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Neural data analysis has increasingly incorporated causal information to study circuit connectivity. Dimensional reduction forms the basis of most analyses of large multivariate time series. Here, we present a new, multitaper-based decomposition for stochastic, multivariate time series that acts on the covariance of the time series at all lags, $C(\tau)$, as opposed to standard methods that decompose the time series, $\mathbf{X}(t)$, using only information at zero-lag. In both simulated and neural imaging examples, we demonstrate that methods that neglect the full causal structure may be discarding important dynamical information in a time series.

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