
Bin Liang
Harbin Institute of Technology
stance detection
information extraction
sarcasm detection
data augmentation
counterfactual reasoning
sentiment analysis
large language models
contrastive learning
prompting
graph convolutional networks
background knowledge
aspect sentiment analysis
debiasing
aspect sentiment triplet extraction
prototypes
7
presentations
4
number of views
SHORT BIO
Bin Liang is a Ph.D. Student at the School of Computer Science and Technology, Harbin Institute of Technology, Shenzhen, China. His current research interests include natural language processing, sentiment analysis, fine-grained sentiment analysis, emotion computation, and machine learning.
Presentations

Cue-CoT: Chain-of-thought Prompting for Responding to In-depth Dialogue Questions with LLMs
Hongru WANG and 7 other authors

Target-to-Source Augmentation for Aspect Sentiment Triplet Extraction
Yice ZHANG and 5 other authors

A Training-Free Debiasing Framework with Counterfactual Reasoning for Conversational Emotion Detection
Geng Tu and 5 other authors

Stance Detection on Social Media with Background Knowledge | VIDEO
Ang Li and 5 other authors

Set Learning for Generative Information Extraction | VIDEO
Jiangnan Li and 4 other authors

Multi-Modal Sarcasm Detection via Cross-Modal Graph Convolutional Network
Bin Liang and 7 other authors

Jointly Learning Aspect-Focused and Inter-Aspect Relations with Graph Convolutional Networks for Aspect Sentiment Analysis
Bin Liang and 4 other authors