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Bayesian statistics / Statistical inference / Statistical models / Estimation theory / Computational statistics / Bayesian network / Coalescent theory / Bayesian / Markov chain Monte Carlo / Particle filter / Ensemble learning / Deep learning
Date: 2016-02-12 07:15:48
Bayesian statistics
Statistical inference
Statistical models
Estimation theory
Computational statistics
Bayesian network
Coalescent theory
Bayesian
Markov chain Monte Carlo
Particle filter
Ensemble learning
Deep learning

Microsoft Word - MSc in Applied Statisticsoutline.docx

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