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Statistics / Statistical theory / Estimation theory / Actuarial science / Expectationmaximization algorithm / Missing data / Maximum likelihood estimation / Variational Bayesian methods / Linear regression / Normal distribution / Covariance / Regression analysis
Date: 2016-08-04 15:02:44
Statistics
Statistical theory
Estimation theory
Actuarial science
Expectationmaximization algorithm
Missing data
Maximum likelihood estimation
Variational Bayesian methods
Linear regression
Normal distribution
Covariance
Regression analysis

Spectral learning of linear dynamics from generalised-linear observations with application to neural population data Lars Buesing∗ , Jakob H. Macke∗,† , Maneesh Sahani Gatsby Computational Neuroscience Unit

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