Data Centric
Data-centric AI prioritizes high-quality data as the primary driver of successful machine learning, shifting focus from solely model optimization. Current research emphasizes improving data quality through techniques like data augmentation, feature engineering, and careful dataset curation, often employing transformer-based models and other deep learning architectures for analysis. This approach is crucial for addressing issues like algorithmic bias, improving model robustness and generalization, and ultimately leading to more reliable and trustworthy AI systems across diverse applications, from healthcare and finance to earth observation and natural language processing.
Papers
Investigating the Impact of Balancing, Filtering, and Complexity on Predictive Multiplicity: A Data-Centric Perspective
Mustafa Cavus, Przemyslaw Biecek
Analysis of Object Detection Models for Tiny Object in Satellite Imagery: A Dataset-Centric Approach
Kailas PS, Selvakumaran R, Palani Murugan, Ramesh Kumar V, Malaya Kumar Biswal M