“让文字说话”:巴西央行与实体经济会议纪要

Carlos Moreno Pérez, M. Minozzo
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引用次数: 10

摘要

本文研究了巴西中央银行货币政策委员会(COPOM)会议纪要中表达的观点与实体经济之间的关系。它应用各种计算语言机器学习算法来构造COPOM会议记录的度量。首先,我们使用潜在狄利克雷分配(Latent Dirichlet Allocation, LDA)来创建会议纪要段落内容的度量。其次,我们利用词嵌入和K-Means建立了会议纪要的不确定性指数。然后,我们将这些指标组合成两个主题不确定性指标。第一个是由与“一般经济状况”相关的主题概率较高的段落构成的。第二个主题-不确定性指数由与“通货膨胀”和“货币政策讨论”相关的主题具有较高概率的段落构建。最后,我们采用结构VAR模型来探讨这些不确定性指数对某些巴西宏观经济变量的持久影响。我们的研究结果表明,在2000年1月至2019年7月期间,更大的不确定性导致通货膨胀、汇率、工业生产和零售贸易下降。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
“Making Text Talk”: The Minutes of the Central Bank of Brazil and the Real Economy
This paper investigates the relationship between the views expressed in the minutes of the meetings of the Central Bank of Brazil’s Monetary Policy Committee (COPOM) and the real economy. It applies various computational linguistic machine learning algorithms to construct measures of the minutes of the COPOM. First, we create measures of the content of the paragraphs of the minutes using Latent Dirichlet Allocation (LDA). Second, we build an uncertainty index for the minutes using Word Embedding and K-Means. Then, we combine these indices to create two topic-uncertainty indices. The first one is constructed from paragraphs with a higher probability of topics related to “general economic conditions”. The second topic-uncertainty index is constructed from paragraphs that have a higher probability of topics related to “inflation” and the “monetary policy discussion”. Finally, we employ a structural VAR model to explore the lasting effects of these uncertainty indices on certain Brazilian macroeconomic variables. Our results show that greater uncertainty leads to a decline in inflation, the exchange rate, industrial production and retail trade in the period from January 2000 to July 2019.
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