Machine Learning in Complex Networks von Thiago Christiano Silva | ISBN 9783319792347

Machine Learning in Complex Networks

von Thiago Christiano Silva und Liang Zhao
Mitwirkende
Autor / AutorinThiago Christiano Silva
Autor / AutorinLiang Zhao
Buchcover Machine Learning in Complex Networks | Thiago Christiano Silva | EAN 9783319792347 | ISBN 3-319-79234-2 | ISBN 978-3-319-79234-7

“The book explores the combined area of complex network-based machine learning. It presents the theoretical concepts underlying the two complementary parts as well as those related to their interaction with respect to supervised, unsupervised and semi-supervised learning. The latest developments in the field, together with real-world test scenarios, are additionally treated in detail.” (Catalin Stoean, zbMATH 1357.68003, 2017)

Machine Learning in Complex Networks

von Thiago Christiano Silva und Liang Zhao
Mitwirkende
Autor / AutorinThiago Christiano Silva
Autor / AutorinLiang Zhao
This book presents the features and advantages offered by complex networks in the machine learning domain. In the first part, an overview on complex networks and network-based machine learning is presented, offering necessary background material. In the second part, we describe in details some specific techniques based on complex networks for supervised, non-supervised, and semi-supervised learning. Particularly, a stochastic particle competition technique for both non-supervised and semi-supervised learning using a stochastic nonlinear dynamical system is described in details. Moreover, an analytical analysis is supplied, which enables one to predict the behavior of the proposed technique. In addition, data reliability issues are explored in semi-supervised learning. Such matter has practical importance and is not often found in the literature. With the goal of validating these techniques for solving real problems, simulations on broadly accepted databases are conducted. Still in thisbook, we present a hybrid supervised classification technique that combines both low and high orders of learning. The low level term can be implemented by any classification technique, while the high level term is realized by the extraction of features of the underlying network constructed from the input data. Thus, the former classifies the test instances by their physical features, while the latter measures the compliance of the test instances with the pattern formation of the data. We show that the high level technique can realize classification according to the semantic meaning of the data. This book intends to combine two widely studied research areas, machine learning and complex networks, which in turn will generate broad interests to scientific community, mainly to computer science and engineering areas.