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Computational neuroscience / Statistics / Neuroscience / Statistical theory / Neural networks / Bioinformatics / Artificial neural network / Bayesian network / Neural coding / Variational Bayesian methods / Bayesian inference / Hidden Markov model
Date: 2016-08-04 15:02:45
Computational neuroscience
Statistics
Neuroscience
Statistical theory
Neural networks
Bioinformatics
Artificial neural network
Bayesian network
Neural coding
Variational Bayesian methods
Bayesian inference
Hidden Markov model

A Bayesian model for identifying hierarchically organised states in neural population activity Patrick Putzky1,2,3 , Florian Franzen1,2,3 , Giacomo Bassetto1,3 , Jakob H. Macke1,3 1 Max Planck Institute for Biological Cy

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