Jump to content

COL341

From IITD Wiki
Revision as of 09:59, 4 March 2026 by Prashantt492 (talk | contribs) (Creating course page via bot)
(diff) ← Older revision | Latest revision (diff) | Newer revision → (diff)
COL341
Fundamentals of Machine Learning
Credits 4
Structure 3-0-2
Pre-requisites COL106, MTL106
Overlaps ELL409, ELL784

COL341 : Fundamentals of Machine Learning

[edit]

Supervised Learning Algorithms: 1. Logistic Regression 2.Neural Networks 3.Decision Trees 4.Nearest Neighbour 5. Support Vector Machines 6. Naive Bayes. ML and MAP estimates. Bayes' Optimal Classifier. Introduction to Graphical Models. Generative Vs. Discriminative Models. Unsupervised learning algorithms: K-Means clustering, Expectation Maximization, Gaussian Mixture Models. PCA and Feature Selection, PAC Learnability, Reinforcement Learning. Some application areas of machine learning e.g. Natural Language Processing, Computer Vision, applications on the web. Introduction to advanced topics such as Statistical Relational Learning.