In sampling theory, stratification corresponds to a technique used in surveys, which allows segmenting a population into homogeneous subpopulations (strata) to produce statistics with a higher level of precision. In particular, this article proposes a heuristic to solve the univariate stratification problem - widely studied in the literature. One of its versions sets the number of strata and the precision level and seeks to determine the limits that define such strata to minimize the sample size allocated to the strata. A heuristic-based on a stochastic optimization method and an exact optimization method was developed to achieve this goal. The performance of this heuristic was evaluated through computational experiments, considering its application in various populations used in other works in the literature, based on 20 scenarios that combine different numbers of strata and levels of precision. From the analysis of the obtained results, it is possible to verify that the heuristic had a performance superior to four algorithms in the literature in more than 94% of the cases, particularly concerning the known algorithms of Kozak and Lavallee-Hidiroglou.
翻译:在抽样理论中,分层法与调查中采用的一种技术相对应,这种技术允许将人口分为同质亚人口(比例),以更精确的方式编制统计数据,特别是,本条建议用一种超自然分层法解决单亚分层问题 -- -- 文献对此进行了广泛研究,其中一种版本规定了分层数和精确度,并试图确定界定这种分层的限度,以尽量减少分层的抽样规模;为实现这一目标,根据一种随机优化法和精确优化法发展了一种超自然分层法;通过计算实验评估了这种超自然分层的性能,考虑到它适用于文献中其他作品中使用的各种人群,其依据是20种不同层次和精确度的假设情况;根据对所获结果的分析,可以核实在超过94%的案件中,超自然分层的性能优于文学中的四种算法,特别是已知的Kozak和Lavallee-Hidiroglou的算法。