Data analysis in bi-partial perspective : clustering and beyond /

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Bibliographic Details
Author / Creator:Owsiński, J. W. (Jan W.), author.
Imprint:Cham, Switzerland : Springer, [2020].
Description:1 online resource (xix, 153 pages).
Language:English
Series:Studies in computational intelligence, 1860-949X ; volume 818
Studies in computational intelligence ; v. 818.
Subject:
Format: E-Resource Book
URL for this record:http://pi.lib.uchicago.edu/1001/cat/bib/12609673
Hidden Bibliographic Details
ISBN:9783030133894
3030133893
9783030133887
3030133885
9783030133900
3030133907
9783030133917
3030133915
Digital file characteristics:text file PDF
Notes:Includes bibliographical references and index.
Online resource; title from PDF title page (SpringerLink, viewed March 28, 2019).
Summary:This book presents the bi-partial approach to data analysis, which is both uniquely general and enables the development of techniques for many data analysis problems, including related models and algorithms. It is based on adequate representation of the essential clustering problem: to group together the similar, and to separate the dissimilar. This leads to a general objective function and subsequently to a broad class of concrete implementations. Using this basis, a suboptimising procedure can be developed, together with a variety of implementations. This procedure has a striking affinity with the classical hierarchical merger algorithms, while also incorporating the stopping rule, based on the objective function. The approach resolves the cluster number issue, as the solutions obtained include both the content and the number of clusters. Further, it is demonstrated how the bi-partial principle can be effectively applied to a wide variety of problems in data analysis. The book offers a valuable resource for all data scientists who wish to broaden their perspective on basic approaches and essential problems, and to thus find answers to questions that are often overlooked or have yet to be solved convincingly. It is also intended for graduate students in the computer and data sciences, and will complement their knowledge and skills with fresh insights on problems that are otherwise treated in the standard "academic" manner.
Other form:Original 3030133885 9783030133887
Standard no.:10.1007/978-3-030-13389-4