Learning from Heterogeneous Networks: Methods and Applications

Chuxu Zhang
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引用次数: 2

Abstract

Complex systems in different disciplines are usually modeled as heterogeneous networks. Different from homogeneous networks or attributed networks, heterogeneous networks are associated with complexity in heterogeneous structure or heterogeneous content or both. The abundant information in heterogeneous networks provide opportunities yet pose challenges for researchers and practitioners to develop customized machine learning solutions for solving different problems in complex systems. We are motivated to do significant work for learning from heterogeneous networks. In this paper, we first introduce the motivation and background of this research. Later, we present our current work which include a series of proposed methods and applications. These methods will be introduced in the perspectives of personalization in web-based systems and heterogeneous network embedding. In the end, we raise several research directions as future agenda.
从异构网络学习:方法和应用
不同学科的复杂系统通常被建模为异构网络。与同质网络或属性网络不同,异质网络与异质结构或异质内容的复杂性有关,或两者兼而有之。异构网络中丰富的信息为研究人员和实践者提供了机遇,但也提出了挑战,以开发定制的机器学习解决方案来解决复杂系统中的不同问题。我们被激励去做重要的工作,从异构网络中学习。本文首先介绍了本研究的动机和背景。随后,我们介绍了我们目前的工作,包括一系列提出的方法和应用。这些方法将从基于web的系统的个性化和异构网络嵌入的角度进行介绍。最后,提出了今后的研究方向。
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