Quantification of economic uncertainty is a key concept for the prediction of macro economic variables such as gross domestic product (GDP), and it becomes particularly relevant on real-time or short-time predictions methodologies, such as nowcasting, where it is required a large amount of time series data, commonly with different structures and frequencies. Most of the data comes from the official agencies statistics and non-public institutions, however, relying our estimates in just the traditional data mentioned before, have some disadvantages. One of them is that economic uncertainty could not be represented or measured in a proper way based solely in financial or macroeconomic data, another one, is that they are susceptible to lack of information due to extraordinary events, such as the current COVID-19 pandemic. For these reasons, it is very common nowadays to use some non-traditional data from different sources, such as social networks or digital newspapers, in addition to the traditional data from official sources. The economic policy uncertainty (EPU) index, is the most used newspaper-based indicator to quantify the uncertainty, and is based on topic modeling of newspapers. In this paper, we propose a methodology to estimate the EPU index, which incorporates a fast and efficient method for topic modeling of digital news based on semantic clustering with word embeddings, allowing to update the index in real-time, which is a drawback with another proposals that use computationally intensive methods for topic modeling, such as Latent Dirichlet Allocation (LDA). We show that our proposal allow us to update the index and significantly reduces the time required for new document assignation into topics.
翻译:经济不确定性的量化是预测国内生产总值(GDP)等宏观经济变量的一个关键概念,对于实时或短期预测方法,例如现在的预测方法来说,它变得特别相关,因为现在的预测需要大量的时间序列数据,通常有不同的结构和频率。然而,大多数数据来自官方机构统计和非公共机构,仅仅依靠以前提到的传统数据来估计经济不确定性,具有一些不利之处。其中之一是,经济不确定性不能仅仅在金融或宏观经济数据中以适当的方式表示或衡量,另一个是,由于当前COVID-19大流行病等非同寻常事件,经济不确定性很容易缺乏信息。由于这些原因,现在非常常见的是,除了使用来自官方来源的传统数据外,使用社会网络或数字报纸等不同来源的一些非传统数据。经济政策不确定性指数是用来量化不确定性的最常用的报纸模型指标,并且以报纸的标本为主题的模型。在本文中,我们提议了一种估算时间定位指数的方法,用于估算EPU指数指数指数,因为像数字模型一样大量地将数据更新建议作为数字模型,而允许将数字模型和数字模型用于更新,从而将数字模型用于更新。