Lecture Notes
A compact index for the static lecture pages, ready to serve directly from Dokploy.
Machine Learning & Supervised Learning
Foundations, generalization, supervised learning, and model assessment.
2Bayesian Decision Theory
Risk, loss functions, discriminants, and probabilistic classification.
3Parametric Methods
Maximum likelihood, regression, classification, and model fitting.
4Graphical Models
Conditional independence, Bayesian networks, and inference patterns.
5Hidden Markov Models
Sequential observations, latent states, and dynamic probabilistic models.
6Rule-Based Learners & Decision Trees
Rules, tree induction, entropy, pruning, and interpretable classifiers.
7Lazy Learners & Density Estimation
Nearest neighbors, local models, nonparametric density, and kernels.
8Support Vector Machines & Kernel Methods
Margins, support vectors, dual form, and kernelized learning.
9Combining Methods
Ensembles, voting, bagging, boosting, random forests, and AdaBoost.