The modeling of earnings per share of Polish companies for the post-financial crisis period using random walk and ARIMA models

Wojciech Kuryłek
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Abstract

The proper forecasting of listed companies’ earnings is crucial for their appropriate pricing. This paper compares forecast errors of different univariate time-series models applied for the earnings per share (EPS) data for Polish companies from the period between the last financial crisis of 2008–2009 and the pandemic shock of 2020. The best model is the seasonal random walk (SRW) model across all quarters, which describes quite well the behavior of the Polish market compared to other analyzed models. Contrary to the findings regarding the US market, this time-series behavior is well described by the naive seasonal random walk model, whereas in the US the most adequate models are of a more sophisticated ARIMA type. Therefore, the paper demonstrates that conclusions drawn for the US might not hold for emerging economies because of the much simpler behavior of these markets that results in the absence of autoregressive and moving average parts.
后金融危机时期波兰公司每股收益的随机漫步和ARIMA模型建模
对上市公司收益的正确预测对其合理定价至关重要。本文比较了2008-2009年上一次金融危机至2020年大流行冲击期间波兰公司每股收益(EPS)数据的不同单变量时间序列模型的预测误差。最好的模型是所有季度的季节性随机游走(SRW)模型,与其他分析模型相比,它能很好地描述波兰市场的行为。与美国市场的研究结果相反,这种时间序列行为可以用朴素的季节性随机漫步模型很好地描述,而在美国,最合适的模型是更复杂的ARIMA类型。因此,本文表明,对美国得出的结论可能不适用于新兴经济体,因为这些市场的行为要简单得多,导致缺乏自回归和移动平均部分。
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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