Learning Apache Mahout Classification
-
Free ChapterClassification in Data Analysis
-
Apache Mahout
-
Learning Logistic Regression / SGD Using Mahout
-
Learning the Naïve Bayes Classification Using Mahout
-
Learning the Hidden Markov Model Using Mahout
-
Learning Random Forest Using Mahout
-
Learning Multilayer Perceptron Using Mahout
-
Mahout Changes in the Upcoming Release
-
Building an E-mail Classification System Using Apache Mahout
This book is a practical guide that explains the classification algorithms provided in Apache Mahout with the help of actual examples. Starting with the introduction of classification and model evaluation techniques, we will explore Apache Mahout and learn why it is a good choice for classification.
Next, you will learn about different classification algorithms and models such as the Naïve Bayes algorithm, the Hidden Markov Model, and so on.
Finally, along with the examples that assist you in the creation of models, this book helps you to build a mail classification system that can be produced as soon as it is developed. After reading this book, you will be able to understand the concept of classification and the various algorithms along with the art of building your own classifiers.
- Publication date:
- February 2015
- Publisher
- Packt
- Pages
- 130
- ISBN
- 9781783554959