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Depth-based support vector classifiers to detect data nests of rare events

机译:基于深度的支持矢量分类器,用于检测稀有事件的数据嵌套

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摘要

The aim of this project is to combine data depth with support vector machines (SVM) for binary classification. To this end, we introduce data depth functions and SVM and discuss why a combination of the two is assumed to work better in some cases than using SVM alone. For two classes X and Y , one investigates whether an individual data point should be assigned to one of these classes. In this context, our focus lies on the detection of rare events, which are structured in data nests: class X contains much more data points than class Y and Y has less dispersion than X. This form of classification problem is akin to finding the proverbial needle in a haystack. Data structures like these are important in churn prediction analyses which will serve as a motivation for possible applications. Beyond the analytical investigations, comprehensive simulation studies will also be carried out.
机译:该项目的目的是将数据深度与支持向量机(SVM)相结合,以进行二进制分类。为此,我们引入数据深度函数和SVM,并讨论为什么假设两者的组合在某些情况下工作更好,而不是单独使用SVM。对于两个类x和y,一个调查是否应该将单独的数据点分配给其中一个类。在这方面,我们的重点在于检测到稀有事件的检测,这些读取的数据嵌套:x类比y类和y具有比x的少于x。这种形式的分类问题类似于寻找众所周知大海捞针。这样的数据结构在流失预测分析中很重要,这将作为可能应用的动机。除了分析调查之外,还将进行全面的仿真研究。

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