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Algorithms for Finding Copulas Minimizing Convex Functions of Sums

机译:寻找求和的凸函数最小化的Copulas算法

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In this paper, we develop improved rearrangement algorithms to find the dependence structure that minimizes a convex function of the sum of dependent variables with given margins. We propose a new multivariate dependence measure, which can assess the convergence of the rearrangement algorithms and can be used as a stopping rule. We show how to apply these algorithms for example to finding the dependence among variables for which the marginal distributions and the distribution of the sum or the difference are known. As an example, we can find the dependence between two uniformly distributed variables that makes the distribution of the sum of two uniform variables indistinguishable from a normal distribution. Using MCMC techniques, we design an algorithm that converges to the global optimum.
机译:在本文中,我们开发了改进的重排算法,以找到最小化具有给定边距的因变量之和的凸函数的依存结构。我们提出了一种新的多元相关性度量,该度量可以评估重排算法的收敛性,并且可以用作停止规则。我们将展示如何应用这些算法来查找变量之间的相关性,已知这些变量的边际分布以及总和或差的分布。例如,我们可以找到两个均匀分布的变量之间的依赖性,这使得两个均匀变量之和的分布与正态分布无法区分。使用MCMC技术,我们设计了一种收敛到全局最优值的算法。

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