Learning from Neighbors: Category Extrapolation for Long-Tail Learning
Shizhen Zhao, Xin Wen, Jiahui Liu, Chuofan Ma, Chunfeng Yuan, Xiaojuan, Qi

TL;DR
This paper introduces a novel long-tail learning method that increases dataset granularity via category extrapolation using auxiliary classes and LLMs, improving generalization for tail classes.
Contribution
It proposes a new approach to long-tail learning by augmenting data with visually similar auxiliary classes and a neighbor-silencing loss to enhance feature generalization.
Findings
Outperforms strong baselines on three long-tail benchmarks.
Increases feature generalization for tail classes.
Effective use of LLMs for auxiliary category retrieval.
Abstract
Balancing training on long-tail data distributions remains a long-standing challenge in deep learning. While methods such as re-weighting and re-sampling help alleviate the imbalance issue, limited sample diversity continues to hinder models from learning robust and generalizable feature representations, particularly for tail classes. In contrast to existing methods, we offer a novel perspective on long-tail learning, inspired by an observation: datasets with finer granularity tend to be less affected by data imbalance. In this paper, we investigate this phenomenon through both quantitative and qualitative studies, showing that increased granularity enhances the generalization of learned features in tail categories. Motivated by these findings, we propose a method to increase dataset granularity through category extrapolation. Specifically, we introduce open-set auxiliary classes that…
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Taxonomy
TopicsGeoscience and Mining Technology
MethodsFocus
