长尾学习系统回顾

Chongsheng Zhang, George Almpanidis, Gaojuan Fan, Binquan Deng, Yanbo Zhang, Ji Liu, Aouaidjia Kamel, Paolo Soda, João Gama
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引用次数: 0

摘要

长尾数据是一种特殊的多类不平衡数据,其中有大量的少数类/尾类,它们的综合影响力非常大。长尾学习的目的是在具有长尾分布的数据集上建立高性能模型,从而高精度地识别所有类别,尤其是少数类别/尾部类别。这是一个前沿的研究方向,在过去几年中吸引了大量的研究力量。在本文中,我们将全面介绍长尾视觉学习的最新进展。我们首先提出了一种新的长尾学习分类法,它由八个不同的维度组成,包括数据平衡、神经架构、特征丰富、对数调整、损失函数、铃声和口哨声、网络优化和事后处理技术。根据我们提出的分类标准,我们对长尾学习方法进行了系统回顾,讨论了它们的共性和可调整的差异。最后,我们讨论了这一领域的前景和未来方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Systematic Review on Long-Tailed Learning
Long-tailed data is a special type of multi-class imbalanced data with a very large amount of minority/tail classes that have a very significant combined influence. Long-tailed learning aims to build high-performance models on datasets with long-tailed distributions, which can identify all the classes with high accuracy, in particular the minority/tail classes. It is a cutting-edge research direction that has attracted a remarkable amount of research effort in the past few years. In this paper, we present a comprehensive survey of latest advances in long-tailed visual learning. We first propose a new taxonomy for long-tailed learning, which consists of eight different dimensions, including data balancing, neural architecture, feature enrichment, logits adjustment, loss function, bells and whistles, network optimization, and post hoc processing techniques. Based on our proposed taxonomy, we present a systematic review of long-tailed learning methods, discussing their commonalities and alignable differences. We also analyze the differences between imbalance learning and long-tailed learning approaches. Finally, we discuss prospects and future directions in this field.
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