The course is intended for graduate students in computer science and related fields such as engineering and statistics. The course addresses the question how to enable computers to learn from past experiences. It introduces the field of machine learning describing a variety of learning paradigms, algorithms, theoretical results and applications.
It introduces basic concepts from statistics, artificial intelligence, information theory and control theory insofar they are relevant to machine learning. The following topics in machine learning and computational intelligence are covered in detail
-concept learning
-decision tree learning
-Bayesian learning
-artificial neural networks
-instance based learning
-computational learning theory
-evolutionary algorithms
-reinforcement learning.