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首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >MEASURING MASS CONCENTRATIONS AND ESTIMATING DENSITY CONTOUR CLUSTERS - AN EXCESS MASS APPROACH
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MEASURING MASS CONCENTRATIONS AND ESTIMATING DENSITY CONTOUR CLUSTERS - AN EXCESS MASS APPROACH

机译:测量质量浓度和估算密度等高线-一种过量的质量方法

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摘要

By using empirical process theory, the so-called excess mass approach is studied. It can be applied to various statistical problems, especially in higher dimensions, such as testing for multimodality, estimating density contour clusters, estimating nonlinear functionals of a density, density estimation, regression problems and spectral analysis. We mainly consider the problems of testing for multimodality and estimating density contour clusters, but the other problems also are discussed. The excess mass (over C) is defined as a supremum of a certain functional defined on C, where C is a class of subsets of the d-dimensional Euclidean space. Comparing excess masses over different classes C yields information about the modality of the underlying probability measure F. This can be used to construct tests for multimodality. If F has a density f, the maximizing sets of the excess mass are level sets or density contour clusters of f, provided they he in C. The excess mass and the density contour clusters can be estimated from the data. Asymptotic properties of these estimators and of the test statistics are studied for general classes C, including the classes of balls, ellipsoids and convex sets. [References: 34]
机译:通过使用经验过程理论,研究了所谓的多余质量方法。它可以应用于各种统计问题,尤其是在更高维度中,例如多模态测试,估计密度轮廓簇,估计密度的非线性函数,密度估计,回归问题和光谱分析。我们主要考虑多模态测试和估计密度轮廓簇的问题,但也讨论了其他问题。多余的质量(超过C)定义为在C上定义的某个函数的总和,其中C是d维欧几里德空间的子集。比较不同类别C上的多余质量会产生有关基础概率测度F的模态的信息。这可用于构造多模态的检验。如果F的密度为f,则多余质量的最大化集为f的水平集或密度轮廓簇,前提是它们在C中。可以从数据中估算出多余质量和密度轮廓簇。研究了这些估计量和检验统计量的渐近性质,其中包括球类,椭圆体和凸集类。 [参考:34]

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