Standard deviation estimation from sums of unequal size samples

IF 0.8 Q3 STATISTICS & PROBABILITY
M. Casquilho, J. Buescu
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引用次数: 2

Abstract

Abstract In numerous industrial and related activities, the sums of the values of, frequently, unequal size samples are systematically recorded, for several purposes such as legal or quality control reasons. For the typical case where the individual values are not or no longer known, we address the point estimation, with confidence intervals, of the standard deviation (and mean) of the individual items, from those sums alone. The estimation may be useful also to corroborate estimates from previous statistical process control. An everyday case of a sum is the total weight of a set of items, such as a load of bags on a truck, which is used illustratively. For the parameters mean and standard deviation of the distribution, assumed Gaussian, we derive point estimates, which lead to weighted statistics, and we derive confidence intervals. For the latter, starting with a tentative reduction to equal size samples, we arrive at a solid conjecture for the mean, and a proposal for the standard deviation. All results are verifiable by direct computation or by simulation in a general and effective way. These computations can be run on public web pages of ours, namely for possible industrial use.
不等大小样本和的标准差估计
摘要在许多工业和相关活动中,由于法律或质量控制等原因,通常会系统地记录大小不等的样本的值总和。对于单个值未知或不再已知的典型情况,我们仅从这些总和中,用置信区间来处理单个项目的标准偏差(和平均值)的点估计。该估计也可用于证实来自先前统计过程控制的估计。总和的日常情况是一组物品的总重量,例如卡车上的一车袋子,这是示例性使用的。对于分布的参数均值和标准差,假设为高斯,我们导出点估计,这导致加权统计,我们导出置信区间。对于后者,从尝试性地减少到相等大小的样本开始,我们得出了平均值的可靠猜想,以及标准偏差的建议。所有结果都可以通过直接计算或模拟以通用有效的方式进行验证。这些计算可以在我们的公共网页上运行,即用于可能的工业用途。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Monte Carlo Methods and Applications
Monte Carlo Methods and Applications STATISTICS & PROBABILITY-
CiteScore
1.20
自引率
22.20%
发文量
31
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