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Lecture
Parametric Models
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Related lectures (31)
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Probabilistic Models for Linear Regression
Covers the probabilistic model for linear regression and its applications in nuclear magnetic resonance and X-ray imaging.
Parametric Models: Regression Estimators and Optimization
Covers parametric models, regression estimators, and optimization in statistical modeling.
Linear Regression: Statistical Inference and Regularization
Covers the probabilistic model for linear regression and the importance of regularization techniques.
Parametric Models: Mathematics of Data
Explores parametric models in data analysis, covering regression estimators, optimization problems, and statistical models.
Generalized Linear Regression: Classification
Explores Generalized Linear Regression, Classification, confusion matrices, ROC curves, and noise in data.
Generalized Linear Models: A Brief Review
Provides an overview of Generalized Linear Models, focusing on logistic and Poisson regression models, and their implementation in R.
Weighted Least Squares Estimation: IRLS Algorithm
Explores the IRLS algorithm for weighted least squares estimation in GLM.
Model Selection Criteria: AIC, BIC, Cp
Explores model selection criteria like AIC, BIC, and Cp in statistics for data science.
Linear Regression: Statistical Inference Perspective
Explores linear regression from a statistical inference perspective, covering probabilistic models, ground truth, labels, and maximum likelihood estimators.
Supervised Learning: Likelihood Maximization
Covers supervised learning through likelihood maximization to find optimal parameters.