Contextual Knowledge
Contextual knowledge, the integration of external information into model processing, is a crucial area of research aiming to enhance the accuracy, robustness, and adaptability of various AI systems. Current efforts focus on developing methods to effectively incorporate and prioritize contextual information over pre-trained knowledge, using techniques like contrastive learning, adaptive decoding, and regularization, often within transformer-based architectures. This research is significant because it addresses limitations in existing models, improving performance on tasks ranging from question answering and image retrieval to medical diagnosis and smart home applications, ultimately leading to more reliable and contextually aware AI systems.
Papers
CROPE: Evaluating In-Context Adaptation of Vision and Language Models to Culture-Specific Concepts
Malvina Nikandrou, Georgios Pantazopoulos, Nikolas Vitsakis, Ioannis Konstas, Alessandro Suglia
ContextDet: Temporal Action Detection with Adaptive Context Aggregation
Ning Wang, Yun Xiao, Xiaopeng Peng, Xiaojun Chang, Xuanhong Wang, Dingyi Fang