
Meng Chen
Engineer @ JD AI Research
dialogue
dialogue understanding
pretrained language model
post-training
dialogue representation
few-shot table understanding
tabular corpus
table understanding benchmark dataset
cv: multi-modal vision
diffusion model
ml: multimodal learning
multimedia & multimodal data
snlp: information extraction
dmkm: mining of visual
snlp: language grounding
5
presentations
6
number of views
SHORT BIO
Meng Chen is Director, JD Conversational AI, Beijing, China. His research includes NLP, speech recognition and multimodal understanding. He currently serving as the program committee member for several top academic conferences. His research interests include Virtual Reality, Computer Vision, Deep Learning, Data Mining, and Pattern Recognition.
Presentations

Dialog-Post: Multi-Level Self-Supervised Objectives and Hierarchical Model for Dialogue Post-Training
Meng Chen and 1 other author

Tackling Modality Heterogeneity with Multi-View Calibration Network for Multimodal Sentiment Detection
Yiwei Wei and 5 other authors

DiffusEmp: A Diffusion Model-Based Framework with Multi-Grained Control for Empathetic Response Generation
Guanqun Bi and 6 other authors

MNER-QG: An End-to-End MRC Framework for Multimodal Named Entity Recognition with Query Grounding
Meihuizi Jia and 7 other authors

Few-Shot Table Understanding: A Benchmark Dataset and Pre-Training Baseline
Ruixue Liu and 4 other authors