
Kai Shu
evaluation
benchmark
few-shot learning
claim verification
weakly-supervised learning
augmentation
prompt tuning
natural language reasoning
large language model
app: misinformation & fake news
dmkm: graph mining
social network analysis & community mining
snlp: text mining
5
presentations
2
number of views
SHORT BIO
Dr. Kai Shu is a Gladwin Development Chair Assistant Professor in the Department of Computer Science at Illinois Institute of Technology since Fall 2020. He obtained his Ph.D. in Computer Science at Arizona State University. He was the recipient of the 2020 ASU Engineering Dean’s Dissertation Award, 2021 Google Cloud Research Credits Award, 2021 Finalist of Meta Research Faculty Award, 2022 Cisco Research Faculty Award. His research addresses challenges varying from big data, to social media, and to trustworthy AI on issues on fake news detection, social network analysis, cybersecurity, and health informatics. He is the leading author of a monograph, Detecting Fake News on Social Media (2019), and the leading editor of a book, Disinformation, Misinformation, and Fake News in Social Media (2020). He has published innovative work in highly ranked journals and top conference proceedings such as ACM KDD, SIGIR, WSDM, WWW, CIKM, IEEE ICDM, IJCAI, and AAAI. More can be found at http://www.cs.iit.edu/~kshu/.
Presentations

Explainable Claim Verification via Knowledge-Grounded Reasoning with Large Language Models
Haoran Wang and 1 other author

PromptDA: Label-guided Data Augmentation for Prompt-based Few Shot Learners
Canyu Chen and 1 other author

Combating Disinformation on Social Media and Its Challenges: A Computational Perspective
Kai Shu

WALNUT: A Benchmark on Semi-weakly Supervised Learning for Natural Language Understanding
Guoqing Zheng and 3 other authors

Fact-Enhanced Synthetic News Generation
Kai Shu and 3 other authors