In the modern world of gigantic datasets, which scientists and
practioners of all fields of learning are confronted with, the
availability of robust, scalable and easy-to-use methods for
pattern recognition and data mining are of paramount importance, so
as to be able to cope with the avalanche of data in a meaningful
way. This concise and pedagogical research monograph introduces the
reader to two specific aspects - clustering techniques and
dimensionality reduction - in the context of complex network
analysis. The first chapter provides a short introduction into
relevant graph theoretical notation; chapter 2 then reviews and
compares a number of cluster definitions from different fields of
science. In the subsequent chapters, a first-principles approach to
graph clustering in complex networks is developed using methods
from statistical physics and the reader will learn, that even
today, this field significantly contributes to the understanding
and resolution of the related statistical inference issues.
Finally, an application chapter examines real-world networks from
the economic realm to show how the network clustering process can
be used to deal with large, sparse datasets where conventional
analyses fail.
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