Periodisation of Poland’s economy 2007–2019

M. Markowska, A. Sokołowski, J. Hausner
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Abstract

: In each country, in the economy observed over long periods of time, usually we can find some developmental phases due to socioeconomic changes, globalization, political decisions, and unexpected events. The identification of such phases, their duration, turning points in the trends of macroeconomic indicators, and some other early signals comprise interesting goals for research. The aim of this paper is to find homogeneous phases in the economic development of Poland from 2007–2019. Eight monthly variables were used, including data on labour markets, salaries, inflation, manufacturing, retail sales, exports, and the overall business climate. This multidimentional time-series dataset was partitioned using cluster analysis methods, namely Ward’s agglomerative method and k-means. Seven sub-periods have been found and they are illustrated by segmented trends and displayed as models and graphs. Economic interpretation of the developments in the phases is explained and interpreted below. Looking at the periods that have been found, one can consider the quality of economic and political decisions, both within the world in general and the European economic situation. This paper presents original periodisation of Poland’s economy and is based on real monthly data with the use of a clustering approach to multidimensional time series.
2007-2019年波兰经济分期分析
在每个国家,在长期观察的经济中,通常我们可以发现由于社会经济变化、全球化、政治决策和意外事件而产生的一些发展阶段。确定这些阶段、它们的持续时间、宏观经济指标趋势的转折点和其他一些早期信号构成了有趣的研究目标。本文的目的是找到2007-2019年波兰经济发展的同质阶段。使用了8个月度变量,包括劳动力市场、工资、通货膨胀、制造业、零售销售、出口和整体商业环境的数据。使用聚类分析方法,即Ward’s aggregation method和k-means对该多维时间序列数据集进行分割。发现了七个子时期,它们用分段趋势加以说明,并以模型和图表的形式显示出来。对各阶段发展的经济解释如下。看看已经发现的时期,人们可以考虑经济和政治决策的质量,无论是在世界范围内还是在欧洲经济形势下。本文介绍了波兰经济的原始分期,并基于实际月度数据,使用聚类方法对多维时间序列。
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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