Towards Heterogeneous Long-tailed Learning: Benchmarking, Metrics, and Toolbox
–Neural Information Processing Systems
Long-tailed data distributions pose challenges for a variety of domains like e-commerce, finance, biomedical science, and cyber security, where the performance of machine learning models is often dominated by head categories while tail categories are inadequately learned. This work aims to provide a systematic view of long-tailed learning with regard to three pivotal angles: (A1) the characterization of data long-tailedness, (A2) the data complexity of various domains, and (A3) the heterogeneity of emerging tasks.
Neural Information Processing Systems
Mar-23-2025, 08:43:44 GMT
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