Peculiarities of ARDL modeling in sociological time series analysis (the case of economic news in the dynamics of CSI in 2010–2017)

Stanislav Pashkov
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Abstract

The Consumer Sentiments Index (CSI) reflects views of the population of Russia on the economic and financial policy of the country and contributes to the understanding of recessive changes in the economy. Current methodological approach singles out inflation, exchange rate, unemployment, intensity of economic events coverage in mass media as the primary factors that guide consumers in their assessments when “rational” signals arise. The article pays attention to the peculiar features of using the ARDL approach in sociological research based on the example of assessing non-economic factors on CSI in 2010-2017, including “socially significant” factors such as mass media. In autoregressive models with distributed lag (ARDL) it is possible to use the “non-economic” indicators that are difficult to include in classical vector autoregressive models (VAR). The article shows that ARDL modeling improves the interpretation of models in the presence of mixed series, and a two-month lag in the news intensity can demonstrate a decrease in consumer sentiments. The approach used in the current study allowed to identify episodes of desynchronization of the dynamics of macro indicators since the 2010s, which, on the one hand, indicates actual changes in the corresponding indicators, and on the other hand, brings more certainty to people’s understanding of the current situation in the economy and opportunities for making large purchases. Additionally, the article examines the methodological and analytical benefits of the CSI data and describe the specifics of including various “sociological” parameters and indicators into the analysis.
社会学时间序列分析中ARDL模型的特殊性(以2010-2017年CSI动态中的经济新闻为例)
消费者情绪指数(CSI)反映了俄罗斯人口对该国经济和金融政策的看法,有助于了解经济中的隐性变化。当前的方法方法将通货膨胀、汇率、失业、大众媒体对经济事件的报道强度作为指导消费者在“理性”信号出现时进行评估的主要因素。本文以2010-2017年CSI非经济因素(包括大众传媒等“社会显著性”因素)评估为例,关注ARDL方法在社会学研究中的独特之处。在具有分布滞后的自回归模型(ARDL)中,可以使用经典向量自回归模型(VAR)中难以包含的“非经济”指标。本文表明,在存在混合序列的情况下,ARDL建模改善了模型的解释,新闻强度的两个月滞后可以表明消费者情绪的下降。本研究使用的方法可以识别自2010年代以来宏观指标动态的不同步事件,这一方面表明了相应指标的实际变化,另一方面为人们对当前经济形势和大宗购买机会的理解带来了更多的确定性。此外,本文考察了CSI数据的方法论和分析优势,并描述了将各种“社会学”参数和指标纳入分析的细节。
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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