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引用次数: 0
摘要
这项研究分析了通过利用各种正交多项式基来逼近概率密度函数的指数形式展开。值得注意的是,无论真实密度函数的偏度和峰度如何,指数展开都能确保维持正概率。特别是,我们利用函数统计的数学工具,介绍了有关该序列向真实密度函数收敛的新发现。特别是,我们证明了指数展开是真实概率的傅里叶级数,与所谓贝叶斯希尔伯特空间的给定正交基有关。此外,我们还介绍了一种基于相应真实分布的前 n 个精确矩来估计扩展系数的数值技术。最后,我们提供了一些数值示例,有效地证明了我们提出的方法的高效性和直接可实施性。
Exponential expansions for approximation of probability distributions
This work analyses expansions of exponential form for approximating probability density functions, through the utilization of diverse orthogonal polynomial bases. Notably, exponential expansions ensure the maintenance of positive probabilities regardless of the degree of skewness and kurtosis inherent in the true density function. In particular, we introduce novel findings concerning the convergence of this series towards the true density function, employing mathematical tools of functional statistics. In particular, we show that the exponential expansion is a Fourier series of the true probability with respect to a given orthonormal basis of the so called Bayesian Hilbert space. Furthermore, we present a numerical technique for estimating the coefficients of the expansion, based on the first n exact moments of the corresponding true distribution. Finally, we provide numerical examples that effectively demonstrate the efficiency and straightforward implementability of our proposed approach.
期刊介绍:
Decisions in Economics and Finance: A Journal of Applied Mathematics is the official publication of the Association for Mathematics Applied to Social and Economic Sciences (AMASES). It provides a specialised forum for the publication of research in all areas of mathematics as applied to economics, finance, insurance, management and social sciences. Primary emphasis is placed on original research concerning topics in mathematics or computational techniques which are explicitly motivated by or contribute to the analysis of economic or financial problems.