
Haoming Jiang
multi-task learning
pruning
ner
generalization
pre-training
weak supervision
compression
human behavior analysis
empathy
lottery ticket hypothesis
pre-trained model fine-tuning
narrative analysis
multilingual knowledge graph; graph neural networks; self-supervised learning
human factors in nlp
7
presentations
11
number of views
1
citations
SHORT BIO
Haoming is an applied research scientist at Amazon Search (A9.com) QU team. Before he joined Amazon, he obtained my Ph.D. degree in Machine Learning from the School of Industrial and Systems Engineering (ISyE) at Georgia Tech. He spent wonderful years with Prof. Tuo Zhao in the FLASH (Foundations of LeArning Systems for alcHemy) research group. He received my B.S. degree in Computer Science and Mathematics from the School of the Gifted Young at the University of Science and Technology of China (USTC).
Presentations

Multilingual knowledge graph completion with self-supervised adaptive graph alignment
Zijie Huang and 8 other authors

Towards Automatic Evaluation of Dialog Systems: A Model-Free Off-Policy Evaluation Approach
Haoming Jiang and 4 other authors

Towards Automatic Evaluation of Dialog Systems: A Model-Free Off-Policy Evaluation Approach
Haoming Jiang and 4 other authors

Token-wise Curriculum Learning for Neural Machine Translation
Chen Liang and 6 other authors

Named Entity Recognition with Small Strongly Labeled and Large Weakly Labeled Data
Haoming Jiang and 4 other authors

Super Tickets in Pre-Trained Language Models: From Model Compression to Improving Generalization
Chen Liang and 7 other authors

Fine-Tuning Pre-trained Language Model with Weak Supervision: A Contrastive-Regularized Self-Training Approach
Yue Yu and 5 other authors