Decomposition with the Additive Model with Exponential Trend Curve and Detection of Seasonal Effect in Descriptive Time Series

K. Dozie, Stephen O. Ihekuna
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Abstract

This article examines decomposition with the additive model. The procedure of decomposition has involved the four basic components and requires a method that can adequately estimate and investigate the trend parameters, seasonal indices and residual component of the series. This article also consider test for seasonality in the additive model with exponential trend curve. The test is applied to the row and overall sample variances of the Buys-Ballot table to detect the presence of seasonal indices in time series.
描述时间序列的指数趋势曲线加性模型分解及季节效应检测
本文用可加性模型研究分解。分解过程涉及到四个基本分量,需要一种能够充分估计和研究序列趋势参数、季节指数和残差分量的方法。本文还考虑了指数趋势曲线加性模型的季节性检验。该检验应用于Buys-Ballot表的行和总体样本方差,以检测时间序列中季节性指数的存在。
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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