Spectral Analysis of Business and Consumer Survey Data

Oscar Claveria, E. Monte, Salvador Torra
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引用次数: 1

Abstract

The main objective of this study is two-fold. First, we aim to detect the underlying existing periodicities in business and consumer survey data. With this objective, we conduct a spectral analysis of all survey indicators. Second, we aim to provide researchers with a filter especially designed for business and consumer survey data that circumvents the a priori assumptions of other filtering methods. To this end, we design a low-pass filter that allows extracting the components with periodicities similar to those that can be found in the dynamics of economic activity. The European Commission (EC) conducts monthly business and consumer tendency surveys in which respondents are asked whether they expect a set of variables to rise, fall or remain unchanged. We apply the Welch method for the detection of periodic components in each of the response options of all monthly survey indicators. This approach allows us to extract the harmonic components that correspond to the cyclic and seasonal patterns of the series. Unlike other methods for spectral density estimation, the Welch algorithm provides smoother estimates of the periodicities. We find remarkable differences between the periodicities detected in the industry survey and the consumer survey. While business survey indicators show a common cyclical component of low frequency that corresponds to about four years, for most consumer survey indicators we do not detect any relevant cyclic components, and the obtained lower frequency periodicities show a very irregular pattern across questions and reply options. Most methods for seasonal adjustment are based on a priori assumptions about the structure of the components and do not depend on the features of the specific series. In order to overcome this limitation, we design a low-pass filter for survey indicators. We opt for a Butterworth filter and apply a zero-phase filtering process to preserve the time alignment of the time series. This procedure allows us to reject the frequency components of the survey indicators that do not have a counterpart in the dynamics of economic activity. We use the filtered series to compute diffusion indexes known as balances, and compare them to the seasonally-adjusted balances published by the EC. Although both series are highly correlated, filtered balances tend to be smoother for the consumer survey indicators.
商业和消费者调查数据的频谱分析
这项研究的主要目的有两个。首先,我们的目标是检测商业和消费者调查数据中存在的潜在周期性。为此,我们对所有调查指标进行光谱分析。其次,我们的目标是为研究人员提供一个专门为商业和消费者调查数据设计的过滤器,它可以绕过其他过滤方法的先验假设。为此,我们设计了一个低通滤波器,允许提取具有周期性的成分,类似于那些可以在经济活动的动态中找到的成分。欧盟委员会(EC)每月进行一次商业和消费者趋势调查,在调查中,受访者被问及他们对一系列变量的预期是上升、下降还是保持不变。我们将韦尔奇方法应用于所有月度调查指标的每个响应选项中周期性成分的检测。这种方法使我们能够提取出与该系列的周期和季节模式相对应的谐波成分。与其他谱密度估计方法不同,Welch算法提供了更平滑的周期性估计。我们发现,在行业调查和消费者调查中发现的周期性之间存在显著差异。虽然商业调查指标显示了一个常见的低频循环成分,对应于大约四年,但对于大多数消费者调查指标,我们没有检测到任何相关的循环成分,并且获得的较低频率周期性显示了问题和回答选项之间非常不规则的模式。大多数季节调整方法是基于对各成分结构的先验假设,而不依赖于特定序列的特征。为了克服这一限制,我们设计了一种针对调查指标的低通滤波器。我们选择巴特沃斯滤波器,并应用零相位滤波过程来保持时间序列的时间对齐。这一程序使我们能够排除在经济活动动态中没有对应项的调查指标的频率成分。我们使用过滤的序列来计算被称为余额的扩散指数,并将它们与EC公布的经季节性调整的余额进行比较。虽然这两个系列是高度相关的,过滤平衡往往更平滑的消费者调查指标。
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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