AINeutralarXiv โ CS AI ยท 10h ago7/10
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Uncertainty Quantification and Data Efficiency in AI: An Information-Theoretic Perspective
This research review examines methodologies for addressing AI systems' challenges with limited training data through uncertainty quantification and synthetic data augmentation. The paper presents formal approaches including Bayesian learning frameworks, information-theoretic bounds, and conformal prediction methods to improve AI performance in data-scarce environments like robotics and healthcare.