Let the Data Do the Talking: Empirical Modelling of Survey-Based Expectations by Means of Genetic Programming

Oscar Claveria, E. Monte, Salvador Torra
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Abstract

In this study we use agents’ expectations about the state of the economy to generate indicators of economic activity in twenty-six European countries grouped in five regions (Western, Eastern, and Southern Europe, and Baltic and Scandinavian countries). We apply a data-driven procedure based on evolutionary computation to transform survey variables in economic growth rates. In a first step, we design five independent experiments to derive the optimal combination of expectations that best replicates the evolution of economic growth in each region by means of genetic programming, limiting the integration schemes to the main mathematical operations. We then rank survey variables according to their performance in tracking economic activity, finding that agents’ “perception about the overall economy compared to last year” is the survey variable with the highest predictive power. In a second step, we assess the out-of-sample forecast accuracy of the evolved indicators. Although we obtain different results across regions, Austria, Slovakia, Portugal, Lithuania and Sweden are the economies of each region that show the best forecast results. We also find evidence that the forecasting performance of the survey-based indicators improves during periods of higher growth.
让数据说话:用遗传规划方法对基于调查的期望进行实证建模
在这项研究中,我们使用代理人对经济状况的预期来生成五个地区(西欧、东欧和南欧,以及波罗的海和斯堪的纳维亚国家)的26个欧洲国家的经济活动指标。我们应用基于进化计算的数据驱动程序来转换经济增长率中的调查变量。在第一步,我们设计了五个独立的实验,通过遗传规划得出期望的最佳组合,以最好地复制每个地区的经济增长演变,将整合方案限制在主要的数学运算中。然后,我们根据调查变量在跟踪经济活动方面的表现对其进行排名,发现代理人“与去年相比对整体经济的看法”是具有最高预测能力的调查变量。在第二步,我们评估进化指标的样本外预测精度。尽管我们在不同地区得到了不同的结果,但奥地利、斯洛伐克、葡萄牙、立陶宛和瑞典是每个地区显示出最佳预测结果的经济体。我们还发现有证据表明,基于调查的指标的预测性能在较高的增长期间有所改善。
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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