缺失数据对时间序列指数趋势周期和季节分量估计的影响:加性情况

K. Dozie, Stephen O. Ihekuna
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引用次数: 0

摘要

本研究探讨数据缺失对趋势参数和季节指数的buy - ballot估计的影响。本研究采用的方法是基于时间序列的行、列和总体均值,排列在一个m行、s列的Buys-Ballot表中。该方法假设(1)只考虑在Buys-Ballot表中某个时间点缺失的数据。(2)趋势曲线可以是线性的,也可以是指数的;(3)分解方法可以是相加的,也可以是混合的。本文表明,缺失数据连续出现时的估计误差是正态分布的。结果表明,在上述假设条件下,有无趋势参数之间的差异不显著,而季节指数之间的差异显著。
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The Effect of Missing Data on Estimates of Exponential Trend-Cycle and Seasonal Components in Time Series: Additive Case
This study discusses the effect of missing data on Buys-Ballot estimates of trend parameters and seasonal indices. The method adopted in this study is based on the row, column and overall means of the time series arranged in a Buys-Ballot table with m rows and s columns.  The method assumes that (1) Only data missing at one point at a time in the Buys-Ballot table is considered. (2) the trending curve is either linear or exponential (3) the decomposition method is either additive or mixed. The article shows that, the estimation of the missing data as they occur consecutively with the errors being normally distributed. Result indicates that, under the stated assumptions, the differences between trend parameters in the presence and absence are insignificant, while that of seasonal indices are significant.
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