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A simulation-based comparison of maximum entropy and copula methods for capturing non-linear probability dependence

机译:基于模拟的基于模拟的最大熵和谱系方法,用于捕获非线性概率依赖性的

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The modeling of complex service systems entails capturing many sub-components of the system, and the dependencies that exist among them in the form of a joint probability distribution. Two common methods for constructing joint probability distributions from experts using partial information include maximum entropy methods and copula methods. In this paper we explore the performance of these methods in capturing the dependence between random variables using correlation coefficients and lower-order pairwise assessments. We focus on the case of discrete random variables, and compare the performance of these methods using a Monte Carlo simulation when the variables exhibit both independence and non-linear dependence structures. We show that the maximum entropy method with correlation coefficients and the Gaussian copula method perform similarly, while the maximum entropy method with pairwise assessments performs better particularly when the variables exhibit non-linear dependence.
机译:复杂服务系统的建模需要捕获系统的许多子组件,以及以联合概率分布的形式中存在的依赖关系。 使用部分信息从专家构建联合概率分布的两种常见方法包括最大熵方法和卷拷贝方法。 在本文中,我们探讨了使用相关系数和低阶成对评估捕获随机变量之间依赖性的方法的性能。 我们专注于离散随机变量的情况,并在变量表现出独立和非线性依赖结构时使用蒙特卡罗模拟比较这些方法的性能。 我们表明,具有相关系数和高斯谱系方法的最大熵方法类似地执行,而当变量表现出非线性依赖性时,具有成对评估的最大熵方法更好地执行。

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