
Jia-Chen Gu
University of Science and Technology of China
multi-party conversation
dialogue system
zero-shot
text generation
pre-trained language model
response generation
retrieval
knowledge
large language models
self-supervision
expectation-maximization
disentanglement
in-context learning
heterogeneous graph
conversation structure
8
presentations
1
number of views
SHORT BIO
I received my Ph.D. degree in Information and Communication Engineering from the University of Science and Technology of China in June 2022, under the supervision of Prof. Zhen-Hua Ling. My main research interests lie within deep learning for natural language processing, and I am particularly interested in dialogue systems and information retrieval.
Presentations

Is ChatGPT a Good Multi-Party Conversation Solver?
Chao-Hong Tan and 2 other authors

MADNet: Maximizing Addressee Deduction Expectation for Multi-Party Conversation Generation | VIDEO
Jia-Chen Gu and 6 other authors

GIFT: Graph-Induced Fine-Tuning for Multi-Party Conversation Understanding
Jia-Chen Gu and 4 other authors

Conversation- and Tree-Structure Losses for Dialogue Disentanglement
Tianda Li and 3 other authors

TegTok: Augmenting Text Generation via Task-specific and Open-world Knowledge
Chao-Hong Tan and 7 other authors

HeterMPC: A Heterogeneous Graph Neural Network for Response Generation in Multi-Party Conversations
Jia-Chen Gu and 6 other authors

Detecting Speaker Personas from Conversational Texts
Jia-Chen Gu and 5 other authors

MPC-BERT: A Pre-Trained Language Model for Multi-Party Conversation Understanding
Jia-Chen Gu and 5 other authors