Arrow Research search
Back to ICLR

ICLR 2023

Long-Tailed Partial Label Learning via Dynamic Rebalancing

Conference Paper Accepted Paper Artificial Intelligence ยท Machine Learning

Abstract

Real-world data usually couples the label ambiguity and heavy imbalance, challenging the algorithmic robustness of partial label learning (PLL) and long-tailed learning (LT). The straightforward combination of LT and PLL, i.e., LT-PLL, suffers from a fundamental dilemma: LT methods build upon a given class distribution that is unavailable in PLL, and the performance of PLL is severely influenced in long-tailed context. We show that even with the auxiliary of an oracle class prior, the state-of-the-art methods underperform due to an adverse fact that the constant rebalancing in LT is harsh to the label disambiguation in PLL. To overcome this challenge, we thus propose a dynamic rebalancing method, termed as RECORDS, without assuming any prior knowledge about the class distribution. Based on a parametric decomposition of the biased output, our method constructs a dynamic adjustment that is benign to the label disambiguation process and theoretically converges to the oracle class prior. Extensive experiments on three benchmark datasets demonstrate the significant gain of RECORDS compared with a range of baselines. The code is publicly available.

Authors

Keywords

  • long-tailed learning
  • partial label learning

Context

Venue
International Conference on Learning Representations
Archive span
2013-2025
Indexed papers
10294
Paper id
1051258020005259159