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Active Learning
71 directly classified papers
Papers per year
2011: 2
2013: 2
2014: 2
2015: 2
2017: 2
2018: 2
2019: 3
2020: 15
2021: 9
2022: 4
2023: 9
2024: 12
2025: 7
Papers
Optimal and Efficient Binary Questioning for Accelerated Annotation
AAAI 2025
UOREX: Towards Uncertainty-Aware Open Relation Extraction
NAACL 2025
Comparison-based Active Preference Learning for Multi-dimensional Personalization
ACL 2025
Culture Cartography: Mapping the Landscape of Cultural Knowledge
EMNLP 2025
SubLIME: Subset Selection via Rank Correlation Prediction for Data-Efficient LLM Evaluation
ACL 2025
HITSZ-HLT at SemEval-2025 Task 8: Multi-turn Interactive Code Generation for Question Answering on Tabular Data
SEMEVAL 2025
Debiased Active Learning with Variational Gradient Rectifier
AAAI 2025
Active Open-Vocabulary Recognition: Let Intelligent Moving Mitigate CLIP Limitations
CVPR 2024
Can Active Label Correction Improve LLM-based Modular AI Systems?
EMNLP 2024
Learning to Learn in Interactive Constraint Acquisition
AAAI 2024
Revisiting the Domain Shift and Sample Uncertainty in Multi-source Active Domain Transfer
CVPR 2024
Causal-Guided Active Learning for Debiasing Large Language Models
ACL 2024
Active Transfer Learning for Efficient Video-Specific Human Pose Estimation
WACV 2024
Active Prompt Learning in Vision Language Models
CVPR 2024
On the Fragility of Active Learners for Text Classification
EMNLP 2024
Learnability Matters: Active Learning for Video Captioning
NIPS 2024
Self-Supervised Adversarial Training via Diverse Augmented Queries and Self-Supervised Double Perturbation
NIPS 2024
ITAKE: Interactive Unstructured Text Annotation and Knowledge Extraction System with LLMs and ModelOps
ACL 2024
Active Learning for Abstractive Text Summarization via LLM-Determined Curriculum and Certainty Gain Maximization
EMNLP 2024
Divide and Adapt: Active Domain Adaptation via Customized Learning
CVPR 2023
LLMaAA: Making Large Language Models as Active Annotators
EMNLP 2023
Re-weighting Tokens: A Simple and Effective Active Learning Strategy for Named Entity Recognition
EMNLP 2023
ActiveAED: A Human in the Loop Improves Annotation Error Detection
ACL 2023
Selective Labeling: How to Radically Lower Data-Labeling Costs for Document Extraction Models
EMNLP 2023
Parameter-Efficient Language Model Tuning with Active Learning in Low-Resource Settings
EMNLP 2023
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