**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.

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