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Identifying the factors of China's seasonal retail sales of consumer goods using a data grouping approach-based GRA method

机译:使用基于数据分组方法的GRA方法确定中国季节性零售销售的因素

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Purpose - Seasonal fluctuation interference often affects the relational analysis of economic time series. The main purpose of this paper is to propose a new grey relational model for relational analysis of seasonal time series and apply it to identify and eliminate the influence of seasonal fluctuation of retail sales of consumer goods in China. Design/methodology/approach - First, the whole quarterly time series is divided into four groups by data grouping method. Each group only contains the time series data in the same quarter. Then, the new series of four-quarters are used to establish the grey correlation model and calculate its correlation coefficient. Finally, the correlation degree of factors in each group of data was calculated and sorted to determine its importance. Findings - The data grouping method can effectively reflect the correlation between time series in different quarters and eliminate the influence of seasonal fluctuation. Practical implications - In this paper, the main factors influencing the quarterly fluctuations of retail sales of consumer goods in China are explored by using the grouped grey correlation model. The results show that the main factors are different from quarter to quarter: in the first quarter, the main factors are money supply, tax and per capita disposable income of rural residents. In the second quarter are money supply, fiscal expenditure and tax. In the third quarter are money supply, fiscal expenditure and per capita disposable income of rural residents. In the fourth quarter are money supply, fiscal expenditure and tax. Originality/value - This paper successfully realizes the application of grey relational model in quarterly time series and extends the applicable scope of grey relational model.
机译:目的 - 季节性波动干扰通常会影响经济时序序列的关系分析。本文的主要目的是提出一种新的灰色关系模型,用于季节性时间序列的关系分析,并应用其来识别和消除中国消费品零售销售季节性波动的影响。设计/方法/方法 - 首先,全季度序列按数据分组方法分为四组。每个组仅包含同一季度的时间序列数据。然后,新的四分之一系列用于建立灰色相关模型并计算其相关系数。最后,计算了每组数据中的因素的相关程度,并排序以确定其重要性。调查结果 - 数据分组方法可以有效地反映不同季度的时间序列之间的相关性,并消除季节波动的影响。实际意义 - 通过使用分组的灰色相关模型,探索了影响中国消费品零售零售零售季度波动的主要因素。结果表明,主要因素与季度不同:第一季度,主要因素是农村居民的金钱供应,税收和人均可支配收入。在第二季度是货币供应,财政支出和税收。第三季度是农民供应,财政支出和农村居民的人均可支配收入。第四季度是货币供应,财政支出和税收。原创/价值 - 本文成功实现了灰色关系模型在季度时间序列中的应用,扩大了灰色关系模型的适用范围。

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