Constrained principal component analysis and related techniques /
In multivariate data analysis, regression techniques predict one set of variables from another while principal component analysis (PCA) finds a subspace of minimal dimensionality that captures the largest variability in the data. How can regression analysis and PCA be combined in a beneficial way? W...
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Online Access: |
Full text (MCPHS users only) |
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Main Author: | |
Format: | Electronic eBook |
Language: | English |
Published: |
Boca Raton :
CRC Press,
2014
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Series: | Monographs on statistics and applied probability (Series) ;
129. |
Subjects: | |
Local Note: | ProQuest Ebook Central |
Summary: | In multivariate data analysis, regression techniques predict one set of variables from another while principal component analysis (PCA) finds a subspace of minimal dimensionality that captures the largest variability in the data. How can regression analysis and PCA be combined in a beneficial way? Why and when is it a good idea to combine them? What kind of benefits are we getting from them? Addressing these questions, Constrained Principal Component Analysis and Related Techniques shows how constrained PCA (CPCA) offers a unified framework for these approaches. The book begins with four concre. |
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Physical Description: | 1 online resource (xvii, 224 pages .) |
Bibliography: | Includes bibliographical references and index. |
ISBN: | 9781466556683 1466556684 |
Source of Description, Etc. Note: | Print version record. |