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Estimation theory / Statistical theory / Parametric model / Loss function / Fisher information / Expectationmaximization algorithm / Divergence / Likelihood function / Gradient descent
Date: 2016-05-26 17:40:03
Estimation theory
Statistical theory
Parametric model
Loss function
Fisher information
Expectationmaximization algorithm
Divergence
Likelihood function
Gradient descent

Energetic Natural Gradient Descent

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