Video Lectures, Video Courses, Science Animations, Lecture Notes, Online Test, Lecture Presentations. Absolutely FREE.

video courses
Video Lecture Description Sub-Category Time Click to view video

Back to Engineering Video Lecture Course Page
Mod-01 Lec-01 Introduction to Statistical Pattern Recognition Electronics Engineering 55 min Click to view videos
Mod-01 Lec-02 Overview of Pattern Classifiers Electronics Engineering 56 min Click to view videos
Mod-02 Lec-03 The Bayes Classifier for minimizing Risk Electronics Engineering 57 min Click to view videos
Mod-02 Lec-04 Estimating Bayes Error; Minimax and Neymann-Pearson classifiers Electronics Engineering 57 min Click to view videos
Mod-03 Lec-05 Implementing Bayes Classifier; Estimation of Class Conditional Densities Electronics Engineering 58 min Click to view videos
Mod-03 Lec-06 Maximum Likelihood estimation of different densities Electronics Engineering 58 min Click to view videos
Mod-03 Lec-07 Bayesian estimation of parameters of density functions, MAP estimates Electronics Engineering 57 min Click to view videos
Mod-03 Lec-08 Bayesian Estimation examples; the exponential family of densities and ML est Electronics Engineering 57 min Click to view videos
Mod-03 Lec-09 Sufficient Statistics; Recursive formulation of ML and Bayesian estimates Electronics Engineering 58 min Click to view videos
Mod-04 Lec-10 Mixture Densities, ML estimation and EM algorithm Electronics Engineering 57 min Click to view videos
Mod-04 Lec-11 Convergence of EM algorithm; overview of Nonparametric density estimation Electronics Engineering 58 min Click to view videos
Mod-05 Lec-12 Nonparametric estimation, Parzen Windows, nearest neighbour methods Electronics Engineering 58 min Click to view videos
Mod-06 Lec-13 Linear Discriminant Functions; Perceptron -- Learning Algorithm and converge Electronics Engineering 58 min Click to view videos
Mod-06 Lec-14 Linear Least Squares Regression; LMS algorithm Electronics Engineering 58 min Click to view videos
Mod-06 Lec-15 AdaLinE and LMS algorithm; General nonliner least-squares regression Electronics Engineering 58 min Click to view videos
Mod-06 Lec-16 Logistic Regression; Statistics of least squares method; Regularized Least S Electronics Engineering 58 min Click to view videos
Mod-06 Lec-17 Fisher Linear Discriminant Electronics Engineering 58 min Click to view videos
Mod-06 Lec-18 Linear Discriminant functions for multi-class case; multi-class logistic reg Electronics Engineering 57 min Click to view videos
Mod-07 Lec-19 Learning and Generalization; PAC learning framework Electronics Engineering 59 min Click to view videos
Mod-07 Lec-20 Overview of Statistical Learning Theory; Empirical Risk Minimization Electronics Engineering 59 min Click to view videos
Mod-07 Lec-21 Consistency of Empirical Risk Minimization Electronics Engineering 59 min Click to view videos
Mod-07 Lec-22 Consistency of Empirical Risk Minimization; VC-Dimension Electronics Engineering 58 min Click to view videos
Mod-07 Lec-23 Complexity of Learning problems and VC-Dimension Electronics Engineering 59 min Click to view videos
Mod-07 Lec-24 VC-Dimension Examples; VC-Dimension of hyperplanes Electronics Engineering 59 min Click to view videos
Mod-08 Lec-25 Overview of Artificial Neural Networks Electronics Engineering 59 min Click to view videos
Mod-08 Lec-26 Multilayer Feedforward Neural networks with Sigmoidal activation functions; Electronics Engineering 59 min Click to view videos
Mod-08 Lec-27 Backpropagation Algorithm; Representational abilities of feedforward network Electronics Engineering 59 min Click to view videos
Mod-08 Lec-28 Feedforward networks for Classification and Regression; Backpropagation in P Electronics Engineering 59 min Click to view videos
Mod-08 Lec-29 Radial Basis Function Networks; Gaussian RBF networks Electronics Engineering 58 min Click to view videos
Mod-08 Lec-30 Learning Weights in RBF networks; K-means clustering algorithm Electronics Engineering 59 min Click to view videos
Mod-09 Lec-31 Support Vector Machines -- Introduction, obtaining the optimal hyperplane Electronics Engineering 59 min Click to view videos
Mod-09 Lec-32 SVM formulation with slack variables; nonlinear SVM classifiers Electronics Engineering 59 min Click to view videos
Mod-09 Lec-33 Kernel Functions for nonlinear SVMs; Mercer and positive definite Kernels Electronics Engineering 59 min Click to view videos
Mod-09 Lec-34 Support Vector Regression and ?-insensitive Loss function, examples of SVM l Electronics Engineering 59 min Click to view videos
Mod-09 Lec-35 Overview of SMO and other algorithms for SVM Electronics Engineering 58 min Click to view videos
Mod-09 Lec-36 Positive Definite Kernels; RKHS; Representer Theorem Electronics Engineering 59 min Click to view videos
Mod-10 Lec-37 Feature Selection and Dimensionality Reduction; Principal Component Analysis Electronics Engineering 59 min Click to view videos
Mod-10 Lec-38 No Free Lunch Theorem; Model selection and model estimation; Bias-variance t Electronics Engineering 60 min Click to view videos
Mod-10 Lec-39 Assessing Learnt classifiers; Cross Validation; Electronics Engineering 60 min Click to view videos
Mod-11 Lec-40 Bootstrap, Bagging and Boosting; Classifier Ensembles; AdaBoost Electronics Engineering 60 min Click to view videos
Mod-11 Lec-41 Risk minimization view of AdaBoost Electronics Engineering 59 min Click to view videos

Bookmark with DeliciousBookmark with DiggBookmark with FacebookBookmark with GoogleBookmark with StumbleUponBookmark with TechnoratiBookmark with LinkedinBookmark with RedditLearnersTV on Twitter