The topics of interest for submission include, but are not limited to :
◕ Machine Learning for NLP Graph-based methods Knowledge-augmented methods Knowledge engineering Artificial intelligence Logic programming Human-computer interaction Deep learning Signal processing Information extraction Natural language inference Multi-task learning) Self-supervised learning Contrastive learning Generation model Data augmentation Word embedding Structured prediction Transfer learning / domain adaptation Representation learning 泛化 Generalization Model compression methods Parameter-efficient finetuning Few-shot learning Reinforcement learning Optimization methods Continual learning Adversarial training Meta learning Causality Graphical models Human-in-a-loop / Active learning |
◕ Interpretability and Analysis of Models in NLP Calibration/uncertainty Counterfactual/contrastive explanations Data influence Data shortcuts/artifacts Explantion faithfulness Feature attribution Free-text/natural language explanation Hardness of samples Hierarchical & concept explanations Human-subject application-grounded evaluations Knowledge tracing/discovering/inducing ◕ NLP Applications Educational applications, GEC, essay scoring Hate speech detection Multimodal applications Code generation and understanding Fact checking, rumour/misinformation detection Healthcare applications, clinical NLP Financial/business NLP Legal NLP Mathematical NLP Security/privacy Historical NLP Knowledge graph |