Random Variables
- Daniel Stonier
Owned by Daniel Stonier
Oct 30, 2016
1 min read
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Probabilistic theory, covariances, multivariate normal distributions, guassian processes.
Page List
- Fundamental Properties — basic rules for independence, expected values, covariance and conditional/marginal distributions.
- GP Regression — using guassian processes to learn from trained data and do inferencing on unknowns.
- Guassian Distributions — basic properties of guassian (normal) distributions.
- Guassian Processes — definition and introduction to guassian processes.
- Linear Regression — introducing a prior belief to the linear weights and using MAP to do estimation/prediction.
- Linear Regression - ML — linear regression via maximum likelihood and some simple assumptions about the system.
- Maximum Likelihood, Maximum A Posteriori and Bayesian — the holy trinity of parameter estimation and data prediction
Notes
- Great series of machine learning lectures put together by mathematical monk@youtube.
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