03721oam 2200589I 450 991079990220332120170816135619.00-429-18837-41-4665-5666-810.1201/b16020 (CKB)2670000000394990(EBL)1402688(SSID)ssj0001040307(PQKBManifestationID)11592788(PQKBTitleCode)TC0001040307(PQKBWorkID)11001677(PQKB)10307777(MiAaPQ)EBC1402688(OCoLC)863136068(CaSebORM)9781466556683(EXLCZ)99267000000039499020180331d2014 uy 0engur|n|---|||||txtccrConstrained principal component analysis and related techniques /Yoshio Takane, Professor Emeritus, McGill University Montreal, Quebec, Canada and Adjunct Professor at University of Victoria British Columbia, Canada1st editionBoca Raton :Chapman and Hall/CRC,2014.©20141 online resource (244 p.)Monographs on statistics and applied probability ;129Description based upon print version of record.1-4665-5668-4 Includes bibliographical references.Front Cover; Contents; List of Figures; List of Tables; Preface; About the Author; Chapter 1 Introduction; Chapter 2 Mathematical Foundation; Chapter 3 Constrained Principal Component Analysis (CPCA); Chapter 4 Special Cases and Related Methods; Chapter 5 Related Topics of Interest; Chapter 6 Different Constraints on Different Dimensions (DCDD); Epilogue; Appendix; Bibliography; Back CoverIn 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 concrete examples of CPCA that provide readers with a basic understanding of the technique and its applications. It gives a detailed account of two key mathematical ideas in CPCA: projection and singular value decomposition. The author then describes the basic data requirements, models, and analytical tools for CPCA and their immediate extensions. He also introduces techniques that are special cases of or closely related to CPCA and discusses several topics relevant to practical uses of CPCA. The book concludes with a technique that imposes different constraints on different dimensions (DCDD), along with its analytical extensions. MATLAB programs for CPCA and DCDD as well as data to create the book's examples are available on the author's website--Provided by publisher.Monographs on statistics and applied probability (Series) ;129.Principal components analysisMultivariate analysisPrincipal components analysis.Multivariate analysis.519.5/35MAT029000bisacshTakane Yoshio1587647FlBoTFGFlBoTFGBOOK9910799902203321Constrained principal component analysis and related techniques3875905UNINA