**A Course in Machine Learning**

by Hal DaumÃ© III

**Publisher**: ciml.info 2012**Number of pages**: 189

**Description**:

CIML is a set of introductory materials that covers most major aspects of modern machine learning (supervised learning, unsupervised learning, large margin methods, probabilistic modeling, learning theory, etc.). It's focus is on broad applications with a rigorous backbone.

Download or read it online for free here:

**Download link**

(2.9MB, PDF)

## Similar books

**A Survey of Statistical Network Models**

by

**A. Goldenberg, A.X. Zheng, S.E. Fienberg, E.M. Airoldi**-

**arXiv**

We begin with the historical development of statistical network modeling and then we introduce some examples in the network literature. Our subsequent discussion focuses on prominent static and dynamic network models and their interconnections.

(

**3191**views)

**Machine Learning and Data Mining: Lecture Notes**

by

**Aaron Hertzmann**-

**University of Toronto**

Contents: Introduction to Machine Learning; Linear Regression; Nonlinear Regression; Quadratics; Basic Probability Theory; Probability Density Functions; Estimation; Classification; Gradient Descent; Cross Validation; Bayesian Methods; and more.

(

**4564**views)

**Understanding Machine Learning: From Theory to Algorithms**

by

**Shai Shalev-Shwartz, Shai Ben-David**-

**Cambridge University Press**

This book introduces machine learning and the algorithmic paradigms it offers. It provides a theoretical account of the fundamentals underlying machine learning and mathematical derivations that transform these principles into practical algorithms.

(

**3064**views)

**A Brief Introduction to Machine Learning for Engineers**

by

**Osvaldo Simeone**-

**arXiv.org**

This monograph provides the starting point to the literature that every engineer new to machine learning needs. It offers a basic and compact reference that describes key ideas and principles in simple terms and within a unified treatment.

(

**921**views)