不惜一切代价去理解一位央行行长——用神经网络嵌入他们的话语

IF 4 1区 经济学 Q1 ECONOMICS
Martin Baumgärtner , Johannes Zahner
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引用次数: 0

摘要

基于字典的方法是量化来自(中央银行)通信的定性信息的最常用方法。在本文中,我们提出了从单词和文档中生成嵌入的机器学习模型。嵌入是多维数字文本表示,它捕获文本中的底层语义关系。使用来自128家中央银行的22,000份文件的新语料库,我们为中央银行通信生成了第一个特定领域的嵌入,在预测货币政策冲击等任务上优于字典和现有嵌入。我们通过构建一个指数来跟踪美联储的沟通与通胀目标立场的一致程度,进一步证明了嵌入的有效性。我们的实证结果表明,偏离通胀目标语言会显著影响市场预期并影响货币政策决策,显著降低估计泰勒规则中的通胀响应参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Whatever it takes to understand a central banker — Embedding their words using neural networks
Dictionary-based methods represent the most commonly used approach for quantifying the qualitative information from (central bank) communication. In this paper, we propose machine learning models that generates embeddings from words and documents. Embeddings are multidimensional numerical text representations that capture the underlying semantic relationships within text. Using a novel corpus of 22,000 documents from 128 central banks, we generate the first domain-specific embeddings for central bank communication that outperform dictionaries and existing embeddings on tasks such as predicting monetary policy shocks. We further demonstrate the efficacy of our embeddings by constructing an index that tracks the extent to which Federal Reserve communications align with an inflation-targeting stance. Our empirical results indicate that deviations from inflation-targeting language substantially affect market-based expectations and influence monetary policy decisions, significantly reducing the inflation response parameter in an estimated Taylor rule.
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来源期刊
CiteScore
5.80
自引率
6.10%
发文量
98
期刊介绍: The Journal of International Economics is intended to serve as the primary outlet for theoretical and empirical research in all areas of international economics. These include, but are not limited to the following: trade patterns, commercial policy; international institutions; exchange rates; open economy macroeconomics; international finance; international factor mobility. The Journal especially encourages the submission of articles which are empirical in nature, or deal with issues of open economy macroeconomics and international finance. Theoretical work submitted to the Journal should be original in its motivation or modelling structure. Empirical analysis should be based on a theoretical framework, and should be capable of replication.
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