从网络中学习:算法、理论和应用

Xiao Huang, Peng Cui, Yuxiao Dong, Jundong Li, Huan Liu, J. Pei, Le Song, Jie Tang, Fei Wang, Hongxia Yang, Wenwu Zhu
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引用次数: 5

摘要

可以说,这个宇宙中的每一个实体都以这样或那样的方式相互连接。随着社交媒体和生物网络等网络数据收集的普及,从网络中学习已成为许多应用中的重要任务。众所周知,网络数据是复杂的、大规模的,对网络数据的分析任务也越来越复杂。在本教程中,我们系统地回顾了从网络中学习的领域,包括算法、理论分析和说明性应用。从快速回顾该地区令人兴奋的历史开始,我们制定了核心技术问题。然后介绍了基于特征选择的方法和基于网络嵌入的方法。接下来,我们将讨论扩展到在实践中很流行的属性网络。最后,我们介绍了最新的热门话题,基于图神经的方法。对于每组方法,我们还调查了相关的理论分析和实际应用示例。我们的教程还激发了一系列开放的问题和挑战,这些问题和挑战可能导致未来的突破。作者是活跃在这一领域的富有成效和经验丰富的研究人员,他们代表了学术界和工业界的良好结合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning From Networks: Algorithms, Theory, and Applications
Arguably, every entity in this universe is networked in one wayr another. With the prevalence of network data collected, such as social media and biological networks, learning from networks has become an essential task in many applications. It is well recognized that network data is intricate and large-scale, and analytic tasks on network data become more and more sophisticated. In this tutorial, we systematically review the area of learning from networks, including algorithms, theoretical analysis, and illustrative applications. Starting with a quick recollection of the exciting history of the area, we formulate the core technical problems. Then, we introduce the fundamental approaches, that is, the feature selection based approaches and the network embedding based approaches. Next, we extend our discussion to attributed networks, which are popular in practice. Last, we cover the latest hot topic, graph neural based approaches. For each group of approaches, we also survey the associated theoretical analysis and real-world application examples. Our tutorial also inspires a series of open problems and challenges that may lead to future breakthroughs. The authors are productive and seasoned researchers active in this area who represent a nice combination of academia and industry.
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