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Statistics / Statistical models / Stochastic processes / Linear filters / Bayesian statistics / Estimation theory / Gibbs sampling / Normal distribution / Kalman filter / Mixture model / Bayesian network / Gaussian process
Date: 2010-10-31 18:18:15
Statistics
Statistical models
Stochastic processes
Linear filters
Bayesian statistics
Estimation theory
Gibbs sampling
Normal distribution
Kalman filter
Mixture model
Bayesian network
Gaussian process

Gaussian sampling by local perturbations George Papandreou Department of Statistics University of California, Los Angeles

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