最小信息联结的适当评分规则

IF 1.4 3区 数学 Q2 STATISTICS & PROBABILITY
Yici Chen, Tomonari Sei
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引用次数: 0

摘要

边际分布均匀的多维分布称为连线图。其中满足给定期望约束且在Kullback-Leibler散度意义上最接近独立分布的称为最小信息联结。最小信息联结的密度函数包含一组称为归一化函数的函数,这些函数通常难以计算。虽然对具有指数族等归一化常数的概率分布提出了一些适当的评分规则,但由于归一化函数的原因,这些评分不适用于最小信息联。本文提出了条件Kullback-Leibler分数,避免了归一化函数的计算。其构建的主要思想是使用成对的观测。我们证明了所提出的分数在联结密度函数空间中是严格适当的,因此由此得到的估计量具有渐近相合性。此外,分数相对于参数是凸的,可以很容易地通过梯度方法进行优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A proper scoring rule for minimum information bivariate copulas

Two-dimensional distributions whose marginal distributions are uniform are called bivariate copulas. Among them, the one that satisfies given constraints on expectation and is closest to being an independent distribution in the sense of Kullback–Leibler divergence is called the minimum information bivariate copula. The density function of the minimum information copula contains a set of functions called the normalizing functions, which are often difficult to compute. Although a number of proper scoring rules for probability distributions having normalizing constants such as exponential families have been proposed, these scores are not applicable to the minimum information copulas due to the normalizing functions. In this paper, we propose the conditional Kullback–Leibler score, which avoids computation of the normalizing functions. The main idea of its construction is to use pairs of observations. We show that the proposed score is strictly proper in the space of copula density functions and therefore the estimator derived from it has asymptotic consistency. Furthermore, the score is convex with respect to the parameters and can be easily optimized by the gradient methods.

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来源期刊
Journal of Multivariate Analysis
Journal of Multivariate Analysis 数学-统计学与概率论
CiteScore
2.40
自引率
25.00%
发文量
108
审稿时长
74 days
期刊介绍: Founded in 1971, the Journal of Multivariate Analysis (JMVA) is the central venue for the publication of new, relevant methodology and particularly innovative applications pertaining to the analysis and interpretation of multidimensional data. The journal welcomes contributions to all aspects of multivariate data analysis and modeling, including cluster analysis, discriminant analysis, factor analysis, and multidimensional continuous or discrete distribution theory. Topics of current interest include, but are not limited to, inferential aspects of Copula modeling Functional data analysis Graphical modeling High-dimensional data analysis Image analysis Multivariate extreme-value theory Sparse modeling Spatial statistics.
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