让文字说话":巴西中央银行会议记录与实体经济

IF 2.8 2区 经济学 Q2 BUSINESS, FINANCE
Carlos Moreno-Pérez , Marco Minozzo
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引用次数: 0

摘要

本文研究了巴西中央银行货币政策委员会(COPOM)会议记录中表达的观点与实体经济之间的关系。本文应用各种语言学机器学习算法,对 COPOM 会议记录中包含的不确定性进行了不同的衡量。为此,我们首先使用 Latent Dirichlet Allocation(LDA)推断会议记录段落的内容。其次,我们利用词嵌入(Word Embedding)和 K-Means(K-Means)建立了会议记录的不确定性指数。第三,我们创建了两个主题不确定性指数。第一个主题-不确定性指数是从与总体经济状况相关的主题概率较高的段落中构建的。第二个主题-不确定性指数由与通货膨胀和货币政策决策相关的主题概率较高的段落构建而成。然后,通过结构 VAR,我们探讨了这些不确定性指数对巴西一些宏观经济变量的持久影响。我们的结果表明,会议纪要不确定性的意外增加会导致汇率贬值,工业生产和零售贸易下降。此外,我们还发现,总体经济状况主题不确定性指数的正向冲击会导致通货膨胀率上升,而通货膨胀和货币政策决策主题不确定性指数的正向冲击则会导致通货膨胀率下降。
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 linguistic machine learning algorithms to construct different measures of the uncertainty contained in the minutes of the COPOM. To achieve this, we first infer the content of the paragraphs of the minutes with Latent Dirichlet Allocation (LDA). Secondly, we build an uncertainty index for the minutes with Word Embedding and K-Means. Thirdly, we create two topic-uncertainty indices. The first topic-uncertainty index is constructed from paragraphs with a higher probability of topics related to general economic conditions. The second topic-uncertainty index is built from paragraphs with a higher probability of topics related to inflation and the monetary policy decision. Then, via a Structural VAR, we explore the lasting effects of these uncertainty indices on some Brazilian macroeconomic variables. Our results show that an unexpected increase in the minutes' uncertainty leads to a depreciation of the exchange rate and a decline in industrial production and retail trade. Moreover, we show that a positive shock to the general economic conditions topic-uncertainty index leads to higher inflation, whereas a positive shock to the inflation and monetary policy decision topic-uncertainty index leads to lower inflation.

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来源期刊
CiteScore
4.20
自引率
4.00%
发文量
141
期刊介绍: Since its launch in 1982, Journal of International Money and Finance has built up a solid reputation as a high quality scholarly journal devoted to theoretical and empirical research in the fields of international monetary economics, international finance, and the rapidly developing overlap area between the two. Researchers in these areas, and financial market professionals too, pay attention to the articles that the journal publishes. Authors published in the journal are in the forefront of scholarly research on exchange rate behaviour, foreign exchange options, international capital markets, international monetary and fiscal policy, international transmission and related questions.
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