Context Information
Context information, encompassing the surrounding data influencing a system's response, is a crucial area of research across numerous fields, aiming to improve model accuracy, robustness, and explainability. Current research focuses on how to effectively integrate contextual information into various models, including large language models (LLMs), vision-language models (VLMs), and other machine learning architectures, often employing techniques like retrieval-augmented generation (RAG), attention mechanisms, and contrastive learning. This work is significant because effective contextualization is vital for building reliable and trustworthy AI systems across applications ranging from natural language processing and computer vision to medical diagnosis and autonomous navigation.
Papers
"It depends": Configuring AI to Improve Clinical Usefulness Across Contexts
Hubert D. Zając, Jorge M. N. Ribeiro, Silvia Ingala, Simona Gentile, Ruth Wanjohi, Samuel N. Gitau, Jonathan F. Carlsen, Michael B. Nielsen, Tariq O. Andersen
Exploring Fairness in Educational Data Mining in the Context of the Right to be Forgotten
Wei Qian, Aobo Chen, Chenxu Zhao, Yangyi Li, Mengdi Huai
From Text to Context: An Entailment Approach for News Stakeholder Classification
Alapan Kuila, Sudeshna Sarkar
Is Less More? Quality, Quantity and Context in Idiom Processing with Natural Language Models
Agne Knietaite, Adam Allsebrook, Anton Minkov, Adam Tomaszewski, Norbert Slinko, Richard Johnson, Thomas Pickard, Dylan Phelps, Aline Villavicencio
Towards Scenario- and Capability-Driven Dataset Development and Evaluation: An Approach in the Context of Mapless Automated Driving
Felix Grün, Marcus Nolte, Markus Maurer
Extending Llama-3's Context Ten-Fold Overnight
Peitian Zhang, Ninglu Shao, Zheng Liu, Shitao Xiao, Hongjin Qian, Qiwei Ye, Zhicheng Dou