Beyond Probability Partitions: Calibrating Neural Networks with Semantic Aware Grouping
–Neural Information Processing Systems
This highlights the importance of partitioning criteria for training a calibrated and accurate model. To validate the aforementioned analysis, we propose a method that involves jointly learning a semantic aware grouping function based on deep model features and logits to partition the data space into subsets. Subsequently, a separate calibration function is learned for each subset.
Neural Information Processing Systems
Oct-9-2025, 05:33:29 GMT