**Lecture Notes in Machine Learning**

by Zdravko Markov

**Publisher**: Central Connecticut State University 2003**Number of pages**: 65

**Description**:

Contents: Introduction; Concept learning; Languages for learning; Version space learning; Induction of Decision trees; Covering strategies; Searching the generalization / specialization graph; Inductive Logic Progrogramming; Unsupervised Learning; Explanation-based Learning.

Download or read it online for free here:

**Download link**

(340KB, PDF)

## Similar books

**Bayesian Reasoning and Machine Learning**

by

**David Barber**-

**Cambridge University Press**

The book is designed for final-year undergraduate students with limited background in linear algebra and calculus. Comprehensive and coherent, it develops everything from basics to advanced techniques within the framework of graphical models.

(

**16691**views)

**Reinforcement Learning: An Introduction**

by

**Richard S. Sutton, Andrew G. Barto**-

**The MIT Press**

The book provides a clear and simple account of the key ideas and algorithms of reinforcement learning. It covers the history and the most recent developments and applications. The only necessary mathematical background are concepts of probability.

(

**21039**views)

**An Introduction to Probabilistic Programming**

by

**Jan-Willem van de Meent, et al.**-

**arXiv.org**

This text is designed to be a graduate-level introduction to probabilistic programming. It provides a thorough background for anyone wishing to use a probabilistic programming system, and introduces the techniques needed to build these systems.

(

**1794**views)

**Optimal and Learning Control for Autonomous Robots**

by

**Jonas Buchli, et al.**-

**arXiv.org**

The starting point is the formulation of of an optimal control problem and deriving the different types of solutions and algorithms from there. These lecture notes aim at supporting this unified view with a unified notation wherever possible.

(

**2558**views)