David B. Skillicorn, "Understanding High-Dimensional Spaces"
English | ISBN: 3642333974 | 2012 | 117 pages | PDF | 3 MB
English | ISBN: 3642333974 | 2012 | 117 pages | PDF | 3 MB
Book Description :
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 are large 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.
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