TY - GEN
T1 - Learning from networks
T2 - 25th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, KDD 2019
AU - Huang, Xiao
AU - Cui, Peng
AU - Dong, Yuxiao
AU - Li, Jundong
AU - Liu, Huan
AU - Pei, Jian
AU - Song, Le
AU - Tang, Jie
AU - Wang, Fei
AU - Yang, Hongxia
AU - Zhu, Wenwu
N1 - Funding Information: Jie Tang is the Full Professor and the vice chair of the Department of Computer Science and Technology at Tsinghua University. His interests include social network analysis, data mining, and machine learning. He served as PC Co-chair of CIKM’16 and WSDM’15, Associate General Chair of KDD’18, and acting Editor-in-Chief of ACM TKDD. He leads the project AMiner.org for academic social network analysis and mining. He was honored with UK Royal Society-Newton Advanced Fellowship Award, NSFC Distinguished Young Scholar, and ACM SIGKDD Service Award. Publisher Copyright: © 2019 Copyright held by the owner/author(s).
PY - 2019/7/25
Y1 - 2019/7/25
N2 - Arguably, every entity in this universe is networked in one way or 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.
AB - Arguably, every entity in this universe is networked in one way or 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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U2 - 10.1145/3292500.3332293
DO - 10.1145/3292500.3332293
M3 - Conference contribution
T3 - Proceedings of the ACM SIGKDD International Conference on Knowledge Discovery and Data Mining
SP - 3221
EP - 3222
BT - KDD 2019 - Proceedings of the 25th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining
PB - Association for Computing Machinery
Y2 - 4 August 2019 through 8 August 2019
ER -