
Sijia Wang
Virginia Tech
event extraction
zero-shot learning
data augmentation
few-shot learning
event semantics
visual question answering
relation extraction
weakly supervised
event detection
entity disambiguation
large language model
multimodal models
query and extract paradigm
binary decoding
prompt learning
7
presentations
1
number of views
SHORT BIO
Sijia Wang is a Ph.D. student in the Department of Computer Science at Virginia Tech. Her current research focus is on natural language processing and machine learning.
Presentations

Debate as Optimization: Adaptive Conformal Prediction and Diverse Retrieval for Event Extraction
Sijia Wang and 1 other author

RE^2: Region-Aware Relation Extraction from Visually Rich Documents
Pritika Ramu and 4 other authors

Targeted Augmentation for Low-Resource Event Extraction
Sijia Wang and 1 other author

Ameli: Enhancing Multimodal Entity Linking with Fine-Grained Attributes
Barry Menglong Yao and 7 other authors

The Art of Prompting: Event Detection based on Type Specific Prompts
Sijia Wang and 2 other authors

Benchmarking Diverse-Modal Entity Linking with Generative Models
Sijia Wang and 10 other authors

Query and Extract: Refining Event Extraction as Type-oriented Binary Decoding
Sijia Wang and 4 other authors