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Testing for Multivariate Outliers in the Presence of Missing Data

机译:在缺少数据的情况下测试多元离群值

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We consider the problem of multivariate outlier testing for purposes of distinguishing seismic signals of underground nuclear events from training samples based on non-nuclear seismic events when certain data are missing. We consider the case in which the training data follow a multivariate normal distribution. Assume a potential outlier is observed on which k features of interest are measured. Assume further that the available training set of n observed on which k features of interest are measured. Assume further that the available training set of n observations on these k features is available but that some of the observations in the training data have missing features. The approach currently used in practice is to perform the outlier testing using a generalized likelihood ratio test procedure based only on the data vectors in the training data with complete data. When there is a substantial amount of missing data within the training set, use of this strategy may lead to a loss of valuable information. An alternative procedure is to incorporate all n of the data vectors in the training data using the EM algorithm to appropriately handle the missing data in the training set. Resampling methods are used to find appropriate critical regions. We use simulation results and analysis of models fit to Pg/Lg ratios for the WMQ station in China to compare these two strategies for dealing with missing data.
机译:我们考虑进行多变量离群测试的问题,目的是在缺少某些数据时,根据非核地震事件从训练样本中区分地下核事件的地震信号。我们考虑训练数据遵循多元正态分布的情况。假设观察到一个潜在的异常值,在该异常值上测量了k个相关特征。进一步假设观察到的n个可用训练集在其上测量了k个感兴趣的特征。进一步假设可获得关于这k个特征的n个观测值的可用训练集,但是训练数据中的某些观测值缺少特征。当前在实践中使用的方法是仅基于训练数据中具有完整数据的数据向量,使用广义似然比测试程序执行离群值测试。当训练集中有大量丢失的数据时,使用此策略可能会导致有价值的信息丢失。一种替代过程是使用EM算法将所有n个数据向量合并到训练数据中,以适当地处理训练集中的缺失数据。重采样方法用于查找适当的关键区域。我们使用模拟结果和适合中国WMQ站的Pg / Lg比率的模型分析来比较这两种处理丢失数据的策略。

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