Decomposition with the Additive Model Using Buys-Ballot Technique of Quadratic Trend-Cycle Component in Descriptive Time Series Analysis

K. Dozie, C. C. Ibebuogu
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Abstract

The study discusses decomposition with the additive model of quadratic trend-cycle in time series. Decomposition method is based on fitting a trend curve by some techniques and de-trending the series, using the de-trended series to adequately estimate and investigate the trend parameters, seasonal indices and residual component of the series. The method adopted in this study assumed that the series are arranged in a Buys-Ballot table with m rows and s columns. The study indicates that, the Buys-Ballot technique is computationally simple when compared with other descriptive techniques. The estimates of the quadratic trend-cycle component and seasonal effects are easily computed from periodic and seasonal averages. Hence, the computations are reduce to \(\hat{a}\) = 3.2051, \(\hat{b}\) = , 0.0218 and \(\hat{c}\) = -0.0001. Therefore, the fitted additive decomposition model is \(\hat{x}\)t = 3.2051+ 0.0218t - 0.0001t2 + \(\hat{s}\)t Under acceptable assumption, the article shows that additive model satisfies (\(\Sigma^s_{j=1}\) s\(_j\) = 0) as in equation (7). We also consider test for seasonality that admits additive model in this study.
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在描述性时间序列分析中使用买波技术对二次趋势-周期成分进行加法模型分解
本研究讨论了时间序列中二次趋势周期加法模型的分解问题。分解法的基础是通过一些技术拟合趋势曲线,并对序列进行去趋势处理,利用去趋势处理后的序列充分估计和研究序列的趋势参数、季节指数和残差成分。本研究采用的方法假定序列排列在一个有 m 行和 s 列的买方博弈表中。研究表明,与其他描述性技术相比,Buys-Ballot 技术计算简单。二次趋势周期成分和季节效应的估计值很容易从周期和季节平均值中计算出来。因此,计算结果为:\(\hat{a}\) = 3.2051,\(\hat{b}\) = , 0.0218 和\(\hat{c}\) = -0.0001。因此,拟合的加法分解模型为 \(\hat{x}\)t = 3.2051+ 0.0218t - 0.0001t2 + \(\hat{s}\)t 在可接受的假设下,文章表明加法模型满足(\(\Sigma^s_{j=1}\) s\(_j\) = 0),如式(7)所示。在本研究中,我们还考虑了对季节性的检验,即承认加法模型。
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