Developed by Jean-Paul Benz?rci more than 30 years ago, correspondence analysis as a framework for analyzing data quickly found widespread popularity in Europe. The topicality and importance of correspondence analysis continue, and with the tremendous computing power now available and new fields of
Correspondence Analysis and Data Coding with Java and R
β Scribed by David Talbot, James Talbot
- Publisher
- Chapman and Hall/CRC
- Year
- 2005
- Tongue
- English
- Leaves
- 245
- Series
- Chapman & Hall/ Computer Science & Data Analysis
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Developed by Jean-Paul BenzΓ©rci more than 30 years ago, correspondence analysis as a framework for analyzing data quickly found widespread popularity in Europe. The topicality and importance of correspondence analysis continue, and with the tremendous computing power now available and new fields of application emerging, its significance is greater than ever.
Correspondence Analysis and Data Coding with Java and R clearly demonstrates why this technique remains important and in the eyes of many, unsurpassed as an analysis framework. After presenting some historical background, the author presents a theoretical overview of the mathematics and underlying algorithms of correspondence analysis and hierarchical clustering. The focus then shifts to data coding, with a survey of the widely varied possibilities correspondence analysis offers and introduction of the Java software for correspondence analysis, clustering, and interpretation tools. A chapter of case studies follows, wherein the author explores applications to areas such as shape analysis and time-evolving data. The final chapter reviews the wealth of studies on textual content as well as textual form, carried out by BenzΓ©cri and his research lab. These discussions show the importance of correspondence analysis to artificial intelligence as well as to stylometry and other fields.
This book not only shows why correspondence analysis is important, but with a clear presentation replete with advice and guidance, also shows how to put this technique into practice. Downloadable software and data sets allow quick, hands-on exploration of innovative correspondence analysis applications.
π SIMILAR VOLUMES
Developed by Jean-Paul BenzΓ©rci more than 30 years ago, correspondence analysis as a framework for analyzing data quickly found widespread popularity in Europe. The topicality and importance of correspondence analysis continue, and with the tremendous computing power now available and new fields of
<h4>Key Features</h4><ul><li>Load, manipulate and analyze data from different sources</li><li>Gain a deeper understanding of fundamentals of applied statistics</li><li>A practical guide to performing data analysis in practice</li></ul><h4>Book Description</h4><p>Frequently the tool of choice for aca
We describe an implementation of simple, multiple and joint correspondence analysis in R. The resulting package comprises two parts, one for simple correspondence analysis and one for multiple and joint correspondence analysis. Within each part, functions for computation, summaries and visualization
<span>SAR IMAGE ANALYSIS β A COMPUTATIONAL STATISTICS APPROACH</span><p><span>Discover how to use statistics to extract information from SAR imagery</span></p><p><span>In </span><span>SAR Image Analysis β A Computational Statistics Approach</span><span>, an accomplished team of researchers delivers