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Using Decision Trees for Knowledge-Assisted Topologically Structured Data Analysis

机译:使用决策树进行知识辅助的拓扑结构数据分析

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Supervised learning of an ensemble of randomized trees is considered to recognize classes of events in topologically structured data (e.g. images or time series). We are primarily interested in classification problems that are characterized by severe scarcity of the training samples. The main idea of our paper consists in favoring the selection of attributes that are known to efficiently discriminate the minority class in those nodes of the tree that are close to the leaves and where classes are represented by a small number of training examples. In practice, the knowledge about the ability of an attribute to discriminate the classes represented in a particular node is either provided by an expert or inferred based on a pre-analysis of the entire initial training set. The experimental validation of our approach considers sign language and human behavior recognition. It reveals that the proposed knowledgeassisted tree induction mechanism efficiently compensates for the shortage of the training samples, and significantly improves the tree classifier accuracy in such scenarios.
机译:有监督学习随机树的集合被认为可以识别拓扑结构化数据(例如图像或时间序列)中的事件类别。我们主要对以训练样本严重稀缺为特征的分类问题感兴趣。本文的主要思想在于,选择已知的属性以有效地区分树中靠近叶子的节点中的少数类,而这些类由少量训练示例表示。在实践中,有关属性区分特定节点中表示的类的能力的知识是由专家提供的,或者是基于对整个初始训练集的预先分析而得出的。我们方法的实验验证考虑了手语和人类行为识别。结果表明,所提出的知识辅助树归纳机制可以有效地弥补训练样本的不足,并在这种情况下显着提高了树分类器的准确性。

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