在就业调查中寻找最佳通胀预测者:来自智利的微数据证据

Carlos A. Medel
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摘要

本文旨在评估智利经济的量化通胀预测,利用对个人微观数据层面的消费者看法的具体调查,同时与智利首都的就业调查相关联。因此,可以准确无误地将消费者观念和未来12个月的通胀预测与个人特征(如性别、年龄、教育水平、居住县和他们目前工作的经济部门)联系起来。通过使用2005年的样本。三、至2018年。结果表明,年龄在35岁至65岁之间、拥有大学学位、居住在圣地亚哥东北部(该市最富有的地区)、在社区和社会服务部门工作的女性是最好的预测者。年龄在35岁至65岁之间、拥有大学学历、生活在东北部和东南部地区、但分别在政府、金融服务和零售部门工作的男性排在第二位。一些计量经济学练习加强并给予最准确的预测者群体更大的支持,并揭示了另一组预测者,在预测准确性方面不同于第二好的预测者,显示了预测变量所需的特征。值得注意的是,这个群体与最准确的群体有着相同的特征,唯一的区别是它是由男性而不是女性组成的。因此,它看起来很有希望得到进一步考虑。重要的是,预测准确性测试表明,没有任何因素优于naïve随机游走预测作为基准。这些结果很重要,因为它们有助于在预测通胀时确定最准确的群体,从而有助于完善调查提供的信息,以实现通胀预测的目的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Searching for the Best Inflation Forecasters within an Employment Survey: Microdata Evidence from Chile
This article aims to evaluate quantitative inflation forecasts for the Chilean economy, taking advantage of a specific survey of consumer perceptions at the individual microdata level, which, at the same time, is linked to a survey of employment in Chile’s capital city. Thus, it is possible to link, with no error, consumer perceptions and 12-month-ahead inflation forecasts with personal characteristics such as gender, age, educational level, county of living, and the economic sector in which they are currently working. By using a sample ranging from 2005.III to 2018.IV, the results suggest that women aged between 35 and 65 years old, with a college degree, living in the North-eastern part of Santiago (the richest of the city), and working in the Community and Social Services sector are the best forecasters. Men aged between 35 and 65 years old, with a college degree, in a tie living in the North-eastern and South-eastern zones but working in Government and Financial Services and Retail sectors, respectively, come in second. Some econometric exercises reinforce and give greater support to the group of most accurate forecasters and reveal that another group of forecasters, different from the second-best in terms of forecast accuracy, displays the characteristics required of a forecasting variable. Remarkably, this group has the same specifications as the most accurate group, with the only difference being that it is composed of men instead of women. Thus, it looks promising for further consideration. Importantly, a forecast accuracy test reveals that no factor comes out as superior to the naïve random walk forecast used as a benchmark. These results are important because they help to identify the most accurate group when forecasting inflation and, thus, help refine the information provided by the survey for inflation forecasting purposes.
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