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Structural Correction Method for Monitoring Parameter Estimation in the Unrepresentative Sample Analysis Problem

机译:未代表样本分析问题中监测参数估计的结构校正方法

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摘要

One of the key issues of the selective statistical investigations (monitoring) analysis problem in case of small samples is insufficient representativeness of the monitoring parameters, especially in the context of selective statistical data generation. In the paper, the structural-classification correction method of monitoring parameter estimation is proposed. The new method allows increasing the reliability of indices estimates, which is critical for largescale socio-economic system analysis and control problems. Developed method applied for economic activity rates analysis problem.
机译:在小型样本的情况下选择性统计调查(监测)分析问题的关键问题之一是监测参数的代表性不足,特别是在选择性统计数据生成的背景下。本文提出了监测参数估计的结构分类校正方法。新方法允许增加指数估计的可靠性,这对于大型社会经济系统分析和控制问题至关重要。开发方法申请经济活动率分析问题。

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