构建平面内随机正态点的最大点间距离分布的方法

E. Hladkyi, V.I. Perlyk
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摘要

许多实际问题都需要构建平面内随机点的最大点间距离分布。文献中考虑了大量点的情况,并为此确定了渐近分布。本文探讨的问题是如何构建平面内少量随机点的最大点间距离分布,这些点的坐标是服从标准正态分布的独立随机量。本文以平面上的三个随机点为基本特例,研究了构建最大点间距离分布的三种方法。第一种方法是从几何角度构建分布函数。为此,从三点间最大距离不超过某个值的条件出发,考虑三点的位置。第三点在平面上的位置是相对于其他两点(最左和最右)确定的。在这种情况下,构建分布函数需要使用数值方法对多个积分进行连续评估。得到的结果与统计模拟的结果十分吻合。第二种方法是研究平面上一对随机法线点之间的距离。单独来看,每对随机法线点之间的距离都服从一维瑞利分布,但从总体来看,它们被证明是相关的,因为它们是由相同的品特坐标确定的。利用三维莫兰-道顿分布构建了三点间距离平方的联合分布。利用它,可以得到三个随机正态点间最大距离平方的分布函数,该函数与最大点间距离分布相同。研究发现,对于较小的距离值,它低估了最大距离不超过某个值的实际概率。对于较大的距离值,上述概率是一致的。第三种方法使用赖斯分布(瑞利分布的广义)来近似平面上三个随机正态点的未知最大点间距离分布。最小二乘法求得的赖斯分布参数与统计模拟求得的参数非常吻合。三个随机法线点的结果被推广到更多的点数(最多 30 个)。结果表明,在这种情况下,第三种方法是最有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ways to construct the maximum interpoint distance distribution for random normal points in a plane
Many practical problems call for constructing the maximum interpoint distance distribution for random pints in a plane. In the literature, the case of a great number of points is considered, for which an asymptotic distribution is determined. This paper addresses the problem of constructing the maximum interpoint distance distribution for a small number of random points in a plane whose coordinates are independent random quantities that obey the standard normal distribution. The special case of three random points in a plane is considered as the basic one, for which three ways to construct the maximum interpoint distance distribution are studied. The first way is to construct the distribution function from geometrical considerations. To do this, the loci of three points are considered from the condition that the maximum distance between them shall not exceed a certain value. The position of the third point in the plane is determined relative to the two other points: the leftmost and the lowermost one. In this case, the construction of the distribution function involves the successive evaluation of several integrals using numerical methods. The obtained results are in good agreement with those of statistical simulation. The second way is based on studying the distance between pairs of random normal points in a plane. Taken separately, the distances between each pair of random normal points obey one-dimensional Rayleigh distributions, but in the aggregate they prove to be correlated because they are determined from the same pint coordinates. A joint distribution of the squared distances between three points is constructed using the three-dimensional Moran-Downton distribution. Using it, a distribution function of the squared maximum distance between three random normal points, which is identical with the maximum interpoint distance distribution, is obtained. It is found that for small values it underestimates the actual probability of the maximum distance not exceeding a certain value. For great distance values, the above probabilities coincide. The third way uses the Rice distribution (a generalization of the Rayleigh distribution) to approximate the unknown maximum interpoint distance distribution for three random normal points in a plane. The Rice distribution parameters found by the least-squares method are in good agreement with those obtained by statistical simulation. The results for three random normal points are generalized to a greater number of points (up to 30). It is shown that in this case the third way is most efficient.
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