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Classification of type I-censored bivariate data

机译:I型检查的双变量数据的分类

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摘要

Type I, or limits of detection censoring occurs when a random variable is only observable between fixed and known limits. The classification problem, when the feature vectors to be used to classify are bivariate type I-censored observations, is considered. A Bayes’ optimal classifier is constructed under the assumption that the underlying distribution is Gaussian and it is shown that the decision boundary between classes is not continuous as in the uncensored case. Examples of the decision boundary are presented and simulation studies are used to illustrate the methods described. The resultant classifier is applied to simulated electrical impedance tomography data and a medical data set as illustrations.
机译:当只能在固定和已知限制之间观察到随机变量时,将发生I型或检测检查限制。当要用于分类的特征向量是双变量I型删节观测值时,考虑分类问题。贝叶斯最优分类器是在假设基础分布是高斯的前提下构造的,并且证明了类别之间的决策边界不像未经审查的情况那样是不连续的。给出了决策边界的示例,并使用仿真研究来说明所描述的方法。所得的分类器应用于模拟电阻抗断层扫描数据和医学数据集,如图所示。

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