Whatever it Takes to Understand a Central Banker – Embedding their Words Using Neural Networks.
Dictionary approaches are at the forefront of current techniques for quantifying central bank communication. This paper proposes embeddings - a language model trained using machine learning techniques - to locate words and documents in a multidimensional vector space. To accomplish this, we utilize...
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Published in: | MAGKS - Joint Discussion Paper Series in Economics (Band 30-2021) |
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Main Authors: | , |
Format: | Article |
Language: | English |
Published: |
Philipps-Universität Marburg
2021
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Subjects: | |
Online Access: | PDF Full Text |
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Summary: | Dictionary approaches are at the forefront of current techniques
for quantifying central bank communication. This paper proposes embeddings - a language model trained using machine learning techniques - to locate words and documents in a multidimensional vector space. To accomplish this, we utilize a text corpus that is unparalleled in size and diversity in the central bank communication literature, as well as introduce a novel approach to text quantification from computational linguistics. This allows us to provide high-quality central bank-specific textual representations and demonstrate their applicability by developing an index that tracks deviations in the Fed's communication towards inflation targeting. Our findings indicate that these deviations in communication significantly impact monetary policy actions, substantially reducing the reaction towards inflation deviation in the US. |
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Physical Description: | 43 Pages |
ISSN: | 1867-3678 |
DOI: | 10.17192/es2024.0703 |