<p><P>Based on ideas from Support Vector Machines (SVMs), <STRONG>Learning To Classify Text Using Support Vector Machines</STRONG> presents a new approach to generating text classifiers from examples. The approach combines high performance and efficiency with theoretical understanding and improved r
Learning to Classify Text Using Support Vector Machines
β Scribed by Thorsten Joachims (auth.)
- Publisher
- Springer US
- Year
- 2002
- Tongue
- English
- Leaves
- 217
- Series
- The Springer International Series in Engineering and Computer Science 668
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Based on ideas from Support Vector Machines (SVMs), Learning To Classify Text Using Support Vector Machines presents a new approach to generating text classifiers from examples. The approach combines high performance and efficiency with theoretical understanding and improved robustness. In particular, it is highly effective without greedy heuristic components. The SVM approach is computationally efficient in training and classification, and it comes with a learning theory that can guide real-world applications.
Learning To Classify Text Using Support Vector Machines gives a complete and detailed description of the SVM approach to learning text classifiers, including training algorithms, transductive text classification, efficient performance estimation, and a statistical learning model of text classification. In addition, it includes an overview of the field of text classification, making it self-contained even for newcomers to the field. This book gives a concise introduction to SVMs for pattern recognition, and it includes a detailed description of how to formulate text-classification tasks for machine learning.
β¦ Table of Contents
Front Matter....Pages i-xvii
Introduction....Pages 1-6
Text Classification....Pages 7-33
Support Vector Machines....Pages 35-44
A Statistical Learning Model of Text Classification for SVMs....Pages 45-74
Efficient Performance Estimators for SVMs....Pages 75-102
Inductive Text Classification....Pages 103-117
Transductive Text Classification....Pages 119-140
Training Inductive Support Vector Machines....Pages 141-162
Training Transductive Support Vector Machines....Pages 163-174
Conclusions....Pages 175-179
Back Matter....Pages 181-205
β¦ Subjects
Artificial Intelligence (incl. Robotics); Information Storage and Retrieval; Data Structures, Cryptology and Information Theory; Information Systems Applications (incl. Internet)
π SIMILAR VOLUMES
<p>This work reviews the state of the art in SVM and perceptron classifiers. A Support Vector Machine (SVM) is easily the most popular tool for dealing with a variety of machine-learning tasks, including classification. SVMs are associated with maximizing the margin between two classes. The concerne
<p><p>This work reviews the state of the art in SVM and perceptron classifiers. A Support Vector Machine (SVM) is easily the most popular tool for dealing with a variety of machine-learning tasks, including classification. SVMs are associated with maximizing the margin between two classes. The conce
<span>Support Vectors Machines have become a well established tool within machine learning. They work well in practice and have now been used across a wide range of applications from recognizing hand-written digits, to face identification, text categorisation, bioinformatics, and database marketing.
β’ Disadvantages of classical neural netsβ’ SVM properties and standard SVM classifierβ’ Related kernelbased learning methodsβ’ Use of the "kernel trick" (Mercer Theorem)β’ LS-SVMs: extending the SVM frameworkβ’ Towards a next generation of universally applicable models?β’ The problem of learning and gener