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Lecture
Robust Regression: Methods and Applications
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Regression Methods: Model Building and Diagnostics
Explores regression methods, covering model building, diagnostics, inference, and analysis of variance.
Linear Models: Introduction
Introduces linear models, regression, Gaussian distribution, linearity, and model generalization.
Robust Regression in Genomic Data Analysis
Explores robust regression in genomic data analysis, focusing on downweighting large residuals for improved estimation accuracy and quality assessment metrics like NUSE and RLE.
Regression: Simple and Multiple Linear
Covers simple and multiple linear regression, including least squares estimation and model diagnostics.
Linear Models for Classification: Multi-Class Extensions
Covers linear models for multi-class classification, focusing on logistic regression and evaluation metrics.
Linear Regression Testing
Explores least squares in linear regression, hypothesis testing, outliers, and model assumptions.
Distribution Theory of Least Squares
Explores the distribution theory of least squares estimators in a Gaussian linear model.
Linear Regression: Fundamentals and Applications
Explores linear regression fundamentals, model training, evaluation, and performance metrics, emphasizing the importance of R², MSE, and MAE.
Machine Learning Fundamentals: Regularization and Cross-validation
Explores overfitting, regularization, and cross-validation in machine learning, emphasizing the importance of feature expansion and kernel methods.
Theoretical Properties of Linear Regression Estimator
Covers the theoretical properties of the linear regression estimator, including the hat matrix and the Gauss-Markov theorem.