
Wai Chung Kwan
The Chinese University of Hong Kong
reliability
transformer
readability
large language models
prompt
knowledge probing
multiple knowledge sources
automatic diagnosis
medical.
retrieval-augmented ds
accessibility; image text matching; counterfactual/contrastive explanations; human-centered evaluation
5
presentations
SHORT BIO
Wai-Chung, Kwan received the B.Sc. degree in Computer Science From Hong Kong Baptist University, Hong Kong in 2019. He is currently a Ph.D. student in the Department of Systems Engineering and Engineering Management of the Chinese University of Hong Kong since 2020.
His research interests include natural language processing, reinforcement learning and dialogue systems.
Presentations

MT-Eval: A Multi-Turn Capabilities Evaluation Benchmark for Large Language Models
Wai Chung Kwan and 8 other authors

Large Language Models as Source Planner for Personalized Knowledge-grounded Dialogues
Hongru WANG and 9 other authors

ReadPrompt: A Readable Prompting Method for Reliable Knowledge Probing
Zezhong WANG and 5 other authors

MCML: A Novel Memory-based Contrastive Meta-Learning Method for Few Shot Slot Tagging
Hongru WANG and 3 other authors

CoAD: Automatic Diagnosis through Symptom and Disease Collaborative Generation
Wai Chung Kwan and 3 other authors