
Jie Huang
text generation
language models
memorization
analysis of language models
personal privacy
descriptive knowledge graph
large language models
association
pre-trained language models
privacy
privacy attacks
prompting
dialogue state tracking
lexical semantics
commonsense reasoning
13
presentations
9
number of views
SHORT BIO
Jie Huang is a third-year PhD student at University of Illinois at Urbana-Champaign, working with Prof. Kevin C.C. Chang. His research lies in Natural Language Processing & Deep Learning, including Language Modeling, Text Generation, Semantics, and Ethics in NLP. Recently, he is particularly interested in truthfulness, reasoning, and ethics of Large Language Models.
Presentations

Trial and Error: Exploration-Based Trajectory Optimization of LLM Agents
Yifan Song and 5 other authors

Descriptive Knowledge Graph in Biomedical Domain
Kerui Zhu and 2 other authors

DimonGen: Diversified Generative Commonsense Reasoning for Explaining Concept Relationships
Jie Huang

Towards Reasoning in Large Language Models: A Survey
Jie Huang

Can Language Models Be Specific? How?
Jie Huang

Understanding Jargon: Combining Extraction and Generation for Definition Modeling
Jie Huang

DEER: Descriptive Knowledge Graph for Explaining Entity Relationships
Jie Huang

MetaASSIST: Robust Dialogue State Tracking with Meta Learning
Fanghua Ye and 5 other authors

Are Large Pre-Trained Language Models Leaking Your Personal Information?
Jie Huang

Domain Representative Keywords Selection: A Probabilistic Approach
Pritom Saha Akash and 5 other authors

Open Relation Modeling: Learning to Define Relations between Entities
Jie Huang and 3 other authors

Measuring Fine-Grained Domain Relevance of Terms: A Hierarchical Core-Fringe Approach
Jie Huang and 3 other authors

Are Large Pre-Trained Language Models Leaking Your Personal Information?
Jie Huang