Inconsistent Node Flattening for Improving Top-Down Hierarchical Classification

Azad Naik, H. Rangwala
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引用次数: 16

Abstract

Large-scale classification of data where classes are structurally organized in a hierarchy is an important area of research. Top-down approaches that exploit the hierarchy during the learning and prediction phase are efficient for large-scale hierarchical classification. However, accuracy of top-down approaches is poor due to error propagation i.e., prediction errors made at higher levels in the hierarchy cannot be corrected at lower levels. One of the main reason behind errors at the higher levels is the presence of inconsistent nodes that are introduced due to the arbitrary process of creating these hierarchies by domain experts. In this paper, we propose two different data-driven approaches (local and global) for hierarchical structure modification that identifies and flattens inconsistent nodes present within the hierarchy. Our extensive empirical evaluation of the proposed approaches on several image and text datasets with varying distribution of features, classes and training instances per class shows improved classification performance over competing hierarchical modification approaches. Specifically, we see an improvement upto 7% in Macro-F1 score with our approach over best TD baseline. SOURCE CODE: http://www.cs.gmu.edu/ mlbio/InconsistentNodeFlattening.
改进自顶向下分层分类的不一致节点平坦化
类在结构上按层次组织的大规模数据分类是一个重要的研究领域。在学习和预测阶段利用层次结构的自顶向下方法对于大规模层次分类是有效的。然而,由于误差传播,自顶向下方法的准确性较差,即在层次结构中较高级别的预测错误无法在较低级别进行纠正。较高级别错误背后的主要原因之一是由于领域专家创建这些层次结构的任意过程而引入的不一致节点的存在。在本文中,我们提出了两种不同的数据驱动方法(本地和全局)用于层次结构修改,以识别和平坦层次结构中存在的不一致节点。我们在几个图像和文本数据集上对所提出的方法进行了广泛的经验评估,这些数据集具有不同的特征、类别和每个类别的训练实例分布,结果表明,与竞争的分层修改方法相比,该方法的分类性能有所提高。具体来说,我们看到,与最佳TD基线相比,我们的方法在宏观f1评分方面提高了7%。源代码:http://www.cs.gmu.edu/ mlbio/InconsistentNodeFlattening。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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