Skip to main content

Pattern Recognition and Machine Learning

a
Course
Postgraduate
Semester
Sem. II
Subject Code
ESG624

Syllabus

Kernel Methods:  Introduction to metric space, vector space, normed space, inner product space; RKHS; Learning theory;  SVM for classification & regression; implementation techniques of SVM;   kernel ridge regression;  kernel density estimation;  kernel PCA; kernel online learning.Random forest, Genetic algorithms, ant colony optimization

Spectral Clustering; model based clustering, Expectation Maximization; Independent Component Analysis; Hidden Markhov models;  Factor Analysis; introduction to Graphical models & Sampling Methods.

Basic concepts of machine learning, inductive learning, decision tree learning, semi-supervised learning, ensemble learning, clustering, artificial neural networks, support vector machines, bayesian learning, deep learning, Convolution neural network, accuracy assessment

 

Text Books

1.Machine Learning for Spatial Environmental Data: Theory, Applications, and Software (Environmental Sciences: Environmental Engineering) 1st Edition Mikhail Kanevski,VadimTimonin,Alexi Pozdnukhov

2. Deep learning by Ian Goodfellow, Yoshua Bengio,Aaron Courville, MIT Press, 2016.

3 Neural Networks and Learning Machines (3rd Ed) by Simon Haykin, McMaster University, Canada,2008

References

1. Pattern Recogonition and Machine learning Christopher M Bishop 2006

2.    Machine Learning, Tom Mitchell, McGraw Hill, 1997