Machine Learning Foundations and Applicatioms

Sub No. : AI42001
LTP: 3-0-3
Credits: 5

Prerequisite : Programming, Linear Algebra

Taught by : Jiaul Paik, Adway Mitra, Manjira Sinha

Teaching Assistents :

Deepayan Chakraborti, Avinash Paidi, Asmita Nandy, Soumyadipta Banerjee, Priyanka, Animesh Sachan


Supervised Learning: K-nearest Neighbor, Linear and Logistic Regression, Neural Networks, Naive Bayes, Decision Tree, Random Forest, Bagging, Adaboost, Perceptron and Support Vector Machine

Unsupervised Learning: K-means, agglomerative and hierarchical clustering, Spectral clustering, Gaussian Mixture Model

Other topics: semi-supervised learning, dimensionality reduction, Bayesian Network