x
Menu

Introduction to Modern Application Development

IIT Madras, , Prof. Tanmai GopalProf. Gaurav Raina

Updated On 02 Feb, 19

Overview

With the increased availability of data from varied sources there has been increasing attention paid to the various data driven disciplines such as analytics and machine learning. In this course we intend to introduce some of the basic concepts of machine learning from a mathematically well motivated perspective. We will cover the different learning paradigms and some of the more popular algorithms and architectures used in each of these paradigms.

Includes

Lecture 1: Introduction to the course

4.1 ( 11 )

Lecture Details

Course Details

COURSE LAYOUT

Week 0:     Probability Theory, Linear Algebra, Convex Optimization - (Recap)
Week 1:     Introduction: Statistical Decision Theory - Regression, Classification, Bias Variance
Week 2:     Linear Regression, Multivariate Regression, Subset Selection, Shrinkage Methods, Principal Component Regression, Partial Least squares
Week 3:     Linear Classification, Logistic Regression, Linear Discriminant Analysis
Week 4:      Perceptron, Support Vector Machines
Week 5:      Neural Networks - Introduction, Early Models, Perceptron Learning, Backpropagation, Initialization, Training & Validation, Parameter Estimation - MLE, MAP, Bayesian Estimation
Week 6:      Decision Trees, Regression Trees, Stopping Criterion & Pruning loss functions, Categorical Attributes, Multiway Splits, Missing Values, Decision Trees - Instability Evaluation Measures
Week 7:      Bootstrapping & Cross Validation, Class Evaluation Measures, ROC curve, MDL, Ensemble Methods - Bagging, Committee Machines and Stacking, Boosting
Week 8:     Gradient Boosting, Random Forests, Multi-class Classification, Naive Bayes, Bayesian Networks
Week 9:     Undirected Graphical Models, HMM, Variable Elimination, Belief Propagation
Week 10:   Partitional Clustering, Hierarchical Clustering, Birch Algorithm, CURE Algorithm, Density-based Clustering
Week 11:   Gaussian Mixture Models, Expectation Maximization
Week 12:   Learning Theory, Introduction to Reinforcement Learning, Optional videos (RL framework, TD learning, Solution Methods, Applications)

Ratings

0


0 Ratings
55%
30%
10%
3%
2%
Comments
comment person image

Sam

Excellent course helped me understand topic that i couldn't while attendinfg my college.

Reply
comment person image

Dembe

Great course. Thank you very much.

Reply
Send