多类学习中逆时间依赖性的表征

Danqi Chen, Weizhu Chen, Qiang Yang
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引用次数: 2

摘要

大多数学习算法的训练时间随着训练数据量的增加而增加。然而,线性二元支持向量机和LR的最新进展通过提出逆依赖性质挑战了这一常识,其中训练时间随着训练数据大小的增加而减少。本文研究了多类分类问题的逆依赖性质。我们描述了一个以实现逆依赖为单一目标的多类分类问题的一般框架,并将其扩展到三种流行的多类算法。给出了证明其收敛性和逆相关保证的理论结果。我们通过实验验证了三种算法在大规模数据集上的反向依赖关系,并保证了算法的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterizing Inverse Time Dependency in Multi-class Learning
The training time of most learning algorithms increases as the size of training data increases. Yet, recent advances in linear binary SVM and LR challenge this commonsense by proposing an inverse dependency property, where the training time decreases as the size of training data increases. In this paper, we study the inverse dependency property of multi-class classification problem. We describe a general framework for multi-class classification problem with a single objective to achieve inverse dependency and extend it to three popular multi-class algorithms. We present theoretical results demonstrating its convergence and inverse dependency guarantee. We conduct experiments to empirically verify the inverse dependency of all the three algorithms on large-scale datasets as well as to ensure the accuracy.
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