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Special Topics In Scientific Computing
Pattern Recognition & Data Mining Lect2: Probability and One Example of Model Fitting
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Ref:
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Probability Theory Apples and Oranges
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Probability Theory Marginal Probability Conditional Probability
Joint Probability
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Probability Theory Sum Rule Product Rule
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The Rules of Probability
Sum Rule Product Rule
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Bayes’ Theorem posterior likelihood × prior
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Probability Densities
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Transformed Densities
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Expectations Conditional Expectation (discrete)
Approximate Expectation (discrete and continuous)
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Variances and Covariances
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The Gaussian Distribution
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Gaussian Mean and Variance
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The Multivariate Gaussian
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Gaussian Parameter Estimation
Likelihood function
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Maximum (Log) Likelihood
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Model Fitting
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Polynomial Curve Fitting
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Sum-of-Squares Error Function
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0th Order Polynomial
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1st Order Polynomial
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3rd Order Polynomial
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9th Order Polynomial
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Over-fitting Root-Mean-Square (RMS) Error:
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Polynomial Coefficients
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Data Set Size: 9th Order Polynomial
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Data Set Size: 9th Order Polynomial
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Regularization Penalize large coefficient values
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Regularization:
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Regularization:
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Regularization: vs.
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Polynomial Coefficients
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Curve fitting: Statistical View
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Maximum Likelihood Determine by minimizing sum-of-squares error,
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Predictive Distribution
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Predictive Distribution
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MAP: A Step towards Bayes
Determine by minimizing regularized sum-of-squares error,
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Bayesian Curve Fitting
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Bayesian Predictive Distribution
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