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Estimating Total Energy Demand from Incomplete Data Using Non-parametric Analysis

机译:使用非参数分析估算来自不完全数据的总能量需求

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The validity and usefulness of empirical data requires that the data analyst ascertains the cleanliness of the collected data before any statistical analysis commence. In this study, petroleum demand data for a period of 24 hours was collected from 1515 households in 10 clusters. The primary sampling units were stratified into three economic classes of which 50% were drawn from low class, 28% from medium class and 22% from high class. 63.6% of the questionnaires were completed whereas incomplete data was computed using multivariate imputation by chained equation with the aid of auxiliary information from past survey. The proportion of missing data and its pattern was ascertained. The study assumed that missing data was at random. Nonparametric methods namely Nadaraya Watson, Local Polynomial and a design estimator Horvitz Thompson were fitted to aid in the estimation of the total demand for petroleum which has no close substitute. The performance of the three estimators were compared and the study found that the Local Polynomial approach appeared to be more efficient and competitive with low bias. Local polynomial estimator took care of the boundary bias better as compared to Nadaraya Watson and Horvitz Thompson estimators. The results were used to estimate the long time gaps in petroleum demand in Nairobi county, Kenya.
机译:经验数据的有效性和有用性要求,数据分析师在任何统计分析开始之前确定收集数据的清洁度。在本研究中,从10个群集的1515户家庭收集了24小时的石油需求数据。主要抽样单元分为三种经济舱,其中50%从低级,28%从中等阶层和高等舱中的22%。 63.6%的问卷完成,借助于过去调查的辅助信息,通过链接方程使用多元归储来计算不完整的数据。确定了缺失数据及其模式的比例。该研究假设缺失数据随机。非参数方法即Nadaraya Watson,局部多项式和设计估算器Horvitz Thompson旨在帮助估算石油的总需求,其没有近距离替代品。比较了三种估计器的性能,研究发现,局部多项式方法似乎更有效,竞争低偏差。与Nadaraya Watson和Horvitz Thompson估算相比,本地多项式估计器照顾边界偏差。结果用于估计肯尼亚内罗毕县石油需求的长期间隙。

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