CentralBankRoBERTa:用于中央银行通信的微调大型语言模型

Moritz Pfeifer , Vincent P. Marohl
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引用次数: 0

摘要

中央银行通信是指导经济和实现货币政策目标的重要工具。自然语言处理 (NLP) 算法一直被用于分析中央银行的通信。这些过时的词袋法往往忽略了上下文,无法区分这些情绪是针对谁的。最近的研究引入了基于深度学习的 NLP 算法,也称为大型语言模型 (LLM),它将上下文考虑在内。本研究将 LLMs 应用于中央银行通信,并构建了 CentralBankRoBERTa,这是一种最先进的经济代理分类器,可区分五种基本宏观经济代理和二元情感分类器,可识别中央银行通信中句子的情感内容。中央银行通信文献中缺乏大型语言模型,这可能是由于缺乏适当标记的数据集。为了填补这一空白,我们推出了我们的模型 CentralBankRoBERTa,为研究中央银行通信的学者提供了一个易于使用的标准化工具。
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CentralBankRoBERTa: A fine-tuned large language model for central bank communications

Central bank communications are an important tool for guiding the economy and fulfilling monetary policy goals. Natural language processing (NLP) algorithms have been used to analyze central bank communications. These outdated bag-of-words methods often ignore context and cannot distinguish who these sentiments are addressing. Recent research has introduced deep-learning-based NLP algorithms, also known as large language models (LLMs), which take context into account. This study applies LLMs to central bank communications and constructs CentralBankRoBERTa, a state-of-the-art economic agent classifier that distinguishes five basic macroeconomic agents and binary sentiment classifier that identifies the emotional content of sentences in central bank communications. The absence of large-language models in the central bank communications literature may be attributed to a lack of appropriately labeled datasets. To address this gap, we introduce our model, CentralBankRoBERTa, offering an easy-to-use and standardized tool for scholars of central bank communications.

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来源期刊
Journal of Finance and Data Science
Journal of Finance and Data Science Mathematics-Statistics and Probability
CiteScore
3.90
自引率
0.00%
发文量
15
审稿时长
30 days
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