AI RESEARCH
Reframing Long-Tailed Learning via Loss Landscape Geometry
arXiv CS.CV
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ArXi:2603.21217v1 Announce Type: new Balancing performance trade-off on long-tail (LT) data distributions remains a long-standing challenge. In this paper, we posit that this dilemma stems from a phenomenon called "tail performance degradation" (the model tends to severely overfit on head classes while quickly forgetting tail classes) and pose a solution from a loss landscape perspective. We observe that different classes possess divergent convergence points in the loss landscape.