Hun Learning
In Search Of The Truth Projected Onto A Finite Dimension
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03 Matrix Derivatives

Finally, we can get the derivative of a multivariate normal density wrt the covariance matrix

Kang Gyeonghun
2020-03-29
Vector, Matrix Derivatives
03 Matrix Derivatives

훈러닝 채널에 벡터 및 행렬 미분 강의 있습니다!

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  • Matrix Derivatives
  • Multivariate Normal
Kang Gyeonghun avatar
I study statistics, machine learning, data science or whatever that concerns making inference on infinitie dimension from a limited sample in fintie dimension. This blog is an archive of my journey of study.
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