
Xinya Du
inductive reasoning
scientific discovery
logical reasoning
prompting
explainability
efficiency
event relation extraction
case-based reasoning
llms
rlhf
commonsense knowledge base completion
natural language deductive reasoning
hypotheses generation
feedbacks
reinforcement learning
4
presentations
12
number of views
SHORT BIO
Xinya Du is a tenure-track assistant professor at UT Dallas Computer Science Department. He earned a Ph.D. degree from Cornell University and was a Postdoctoral Research Associate at the University of Illinois (UIUC). He has also worked at Microsoft Research, Google Research, and Allen Institute AI (AI2). His research is on natural language processing, deep learning, and Artificial Intelligence, with the goal of building intelligent machines with both faithful and human-aligned knowledge & reasoning capabilities.
His work has been published in leading NLP conferences such as ACL. His work was included in the list of Most Influential ACL Papers by Paper Digest and has been covered by major media like New Scientist. He was named a Spotlight Rising Star in Data Science by the University of Chicago.
Presentations

Large Language Models for Automated Open-domain Scientific Hypotheses Discovery
Zonglin Yang and 5 other authors

Language Models as Inductive Reasoners
Zonglin Yang and 7 other authors

Making Natural Language Reasoning Explainable and Faithful
Xinya Du

End-to-end Case-Based Reasoning for Commonsense Knowledge Base Completion
Zonglin Yang and 3 other authors