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Efficient Discriminative Learning of Class Hierarchy for Many Class Prediction

机译:许多类预测的高效鉴别学习类层次结构

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Recently the maximum margin criterion has been employed to learn a discriminative class hierarchical model, which shows promising performance for rapid multi-class prediction. Specifically, at each node of this hierarchy, a separating hyperplane is learned to split its associated classes from all of the corresponding training data, leading to a time-consuming training process in computer vision applications with many classes such as large-scale object recognition and scene classification. To address this issue, in this paper we propose a new efficient discriminative class hierarchy learning approach for many class prediction. We first present a general objective function to unify the two state-of-the-art methods for multi-class tasks. When there are many classes, this objective function reveals that some classes are indeed redundant. Thus, omitting these redundant classes will not degrade the prediction performance of the learned class hierarchical model. Based on this observation, we decompose the original optimization problem into a sequence of much smaller sub-problems by developing an adaptive classifier updating method and an active class selection strategy. Specifically, we itera-tively update the separating hyperplane by efficiently using the training samples only from a limited number of selected classes that are well separated by the current separating hyperplane. Comprehensive experiments on three large-scale datasets demonstrate that our approach can significantly accelerate the training process of the two state-of-the-art methods while achieving comparable prediction performance in terms of both classification accuracy and testing speed.
机译:最近,已经采用了最大边际标准来学习鉴别类别分层模型,这表明了快速多级预测的有希望的性能。具体地,在该层级的每个节点处,学习分离超平面以从所有相应的训练数据拆分其相关类,导致计算机视觉应用中的耗时的培训过程,其中许多类(例如大规模对象识别)场景分类。为了解决这个问题,在本文中,我们提出了一种新的高效鉴别类别层次学习方法,用于许多课程预测。我们首先展示了一般的目标函数,以统一多级任务的两种最先进的方法。当存在许多类时,这种目标函数揭示了一些类确实是多余的。因此,省略这些冗余类不会降低学习类分层模型的预测性能。基于该观察,通过开发自适应分类器更新方法和活动类选择策略,我们将原始优化问题分解为大得多较小的子问题的序列。具体而言,我们通过仅从电流分离超平面良好分隔的有限数量的所选类别有效地使用训练样本,通过有效地使用训练样本来实现分离超平面。三个大型数据集的综合实验表明,我们的方法可以显着加速两种最先进方法的培训过程,同时在分类精度和测试速度方面实现了可比的预测性能。

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