Machine Learning in Complex Networks

Thiago Christiano Silva, Liang Zhao

相關主題

商品描述

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 this book, 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.

商品描述(中文翻譯)

本書介紹了複雜網絡在機器學習領域所提供的特徵和優勢。在第一部分,我們提供了複雜網絡和基於網絡的機器學習的概述,提供必要的背景資料。在第二部分,我們詳細描述了一些基於複雜網絡的特定技術,這些技術適用於監督式、非監督式和半監督式學習。特別地,我們詳細介紹了一種隨機粒子競爭技術,該技術使用隨機非線性動態系統,適用於非監督式和半監督式學習。此外,我們提供了一個分析性分析,使人們能夠預測所提出技術的行為。此外,在半監督式學習中探討了數據可靠性問題。這一問題具有實際重要性,且在文獻中並不常見。為了驗證這些技術在解決實際問題中的有效性,我們在廣泛接受的數據庫上進行了模擬。本書中,我們還提出了一種混合監督分類技術,結合了低階和高階的學習。低階部分可以通過任何分類技術實現,而高階部分則是通過從輸入數據構建的底層網絡中提取特徵來實現。因此,前者根據物理特徵對測試實例進行分類,而後者則測量測試實例與數據模式形成的符合程度。我們展示了高階技術可以根據數據的語義意義實現分類。本書旨在結合兩個廣泛研究的領域,即機器學習和複雜網絡,這將引起科學社群的廣泛興趣,主要集中在計算機科學和工程領域。