Curriculum
- 10 Sections
- 55 Lessons
- Lifetime
Expand all sectionsCollapse all sections
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Copulas2
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Quantile Regression3
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Expectation Maximization (EM)5
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Multiple Hypothesis Testing7
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Computational Statistics11
- 5.1Gauss Newton – Non Linear Least Squares
- 5.2Riemann Sum, Rejection Sampling, Importance Sampling – Part 1
- 5.3Riemann Sum, Rejection Sampling, Importance Sampling – Part 2
- 5.4Rejection Sampling – Bounding Constant
- 5.5Rejection Sampling – Proof
- 5.6Sampling Importance Resampling (SIR)
- 5.7Profile Likelihood
- 5.8Profile Likelihood – what is a profile?
- 5.9Profile Likelihood – simpler examples
- 5.10Laplace’s Method
- 5.11Random Sampling – Uniform & Inverse Transform
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Gaussian Process Regression5
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Factor Analysis9
- 7.1Material
- 7.2(Exploratory) Factor Analysis – Introduction
- 7.3(Exploratory) Factor Analysis – Estimation
- 7.4(Exploratory) Factor Analysis – Rotation
- 7.5(Exploratory) Factor Analysis – Code in R
- 7.6Exploratory vs. Confirmatory Factor Analysis
- 7.7(Confirmatory) Factor Analysis – Code in R
- 7.8SEM – Structural Equations Modelling
- 7.9SEM – Code in R
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Time Series Analysis7
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Clustering1
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Other5
