南京大学计算机科学与技术系
软件新技术与产业化协同创新中心
摘 要:
Recent years have seen a significantly growing amount of interests
in graph neural networks (GNNs), especially on efforts devoted to developing
more effective GNNs for node classification, graph classification, and graph
generation. However, there are relatively less studies on other important
topics such as graph-based encoder-decoder, deep graph matching, and deep graph
learning. In the first part of the talk, I will introduce a Graph2Seq neural
network framework, a novel attention-based encoder-decoder architecture for
graph-to-sequence learning, and then talk about how to apply this model in
different NLP tasks. In the second part of the talk, I will introduce a
Hierarchical Graph Matching Network (HGMN) for computing the graph similarity
between any pair of graph-structured objects. Our model jointly learns graph
representations and a graph matching metric function for computing graph
similarity in an end-to-end fashion. In the third part of the talk, I will
introduce an end-to-end graph learning framework, namely Iterative Deep Graph
Learning (IDGL), for jointly learning graph structure and graph embeddings
simultaneously.
报告人简介:
Dr. Lingfei Wu is a Research Staff Member in the IBM AI Foundations
Labs, Reasoning group at IBM T. J. Watson Research Center. He earned his Ph.D.
degree in computer science from the College of William and Mary in 2016.
Lingfei Wu is a passionate researcher and responsible team leader, developing
novel deep learning/machine learning models for solving real-world challenging
problems. He has served as the PI in IBM for several federal agencies such as
DARPA and NSF (more than $1.8M), as well as MIT-IBM Watson AI Lab. He has
published more than 50 top-ranked conference and journal papers in ML/DL/NLP
domains and is a co-inventor of more than 20 filed US patents. He was the
recipient of the Best Paper Award and Best Student Paper Award of several
conferences such as IEEE ICC'19 and KDD workshop on DLG'19. His research has
been featured in numerous media outlets, including NatureNews, YahooNews,
Venturebeat, TechTalks, SyncedReview, Leiphone, QbitAI, MIT News, IBM Research
News, and SIAM News. He has organized or served as Poster co-chairs of IEEE
BigData'19, Tutorial co-chairs of IEEE BigData'18, Workshop co-chairs of Deep
Learning on Graphs (with KDD'19, IEEE BigData’19, and AAAI'20), and regularly
served as a SPC/TPC member of the following major AI/ML/DL/DM/NLP conferences
including NIPS, ICML, ICLR, ACL, IJCAI, AAAI, and KDD.
时间:10月11日14:00-15:00
地点:仙2-103
|