Understanding High-Dimensional Spaces

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This book proposes new ways of thinking about high-dimensional spaces using two models: the skeleton that relates the clusters to one another, and the boundaries in empty space that provide new perspectives on outliers and on outlying regions.

High-dimensional spaces arise as a way of modelling datasets with many attributes. Such a dataset can be directly represented in a space spanned by its attributes, with each record represented as a point in the space with its position depending on its attribute values. Such spaces are not easy to work with because of their high dimensionality: our intuition about space is not reliable, and measures such as distance do not provide as clear information as we might expect.

There are three main areas where complex high dimensionality and large datasets arise naturally: data collected by online retailers, preference sites, and social media sites, and customer relationship databases, where there are large but sparse records available for each individual; data derived from text and speech, where the attributes are words and so the corresponding datasets are wide, and sparse; and data collected for security, defense, law enforcement, and intelligence purposes, where the datasets arelarge and wide. Such datasets are usually understood either by finding the set of clusters they contain or by looking for the outliers, but these strategies conceal subtleties that are often ignored. In this book the author suggests new ways of thinking about high-dimensional spaces using two models: a skeleton that relates the clusters to one another; and boundaries in the empty space between clusters that provide new perspectives on outliers and on outlying regions.

The book will be of value to practitioners, graduate students and researchers.


High-dimensional spaces arise naturally as a way of modelling datasets with many attributes Author suggests new ways of thinking about high-dimensional spaces using two models Valuable for practitioners, graduate students and researchers Includes supplementary material: sn.pub/extras

Autorentext
Prof. David B. Skillicorn is a professor in the School of Computing at Queen's University in Kingston, Ontario; he is also an adjunct professor in the Mathematics and Computer Science Department of the Royal Military College of Canada. His research interests include data mining, knowledge discovery, machine learning, parallel and distributed computing, intelligence and security informatics, and collaborative research.

Inhalt
Introduction.- Basic Structure of High-Dimensional Spaces.- Algorithms.- Spaces with a Single Center.- Spaces with Multiple Clusters.- Representation by Graphs.- Using Models of High-Dimensional Spaces.- Including Contextual Information.- Conclusions.- Index.- References.

Weitere Informationen

  • Allgemeine Informationen
    • GTIN 09783642333972
    • Anzahl Seiten 120
    • Lesemotiv Verstehen
    • Genre Allgemein & Lexika
    • Auflage 2012
    • Herausgeber Springer Berlin Heidelberg
    • Gewicht 195g
    • Untertitel SpringerBriefs in Computer Science
    • Größe H235mm x B155mm x T7mm
    • Jahr 2012
    • EAN 9783642333972
    • Format Kartonierter Einband
    • ISBN 3642333974
    • Veröffentlichung 27.09.2012
    • Titel Understanding High-Dimensional Spaces
    • Autor David B. Skillicorn
    • Sprache Englisch

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