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Main Authors: Seok, Sungil, Wen, Shuide, Yang, Qiyuan, Feng, Juan, Yang, Wenming
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.18012
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author Seok, Sungil
Wen, Shuide
Yang, Qiyuan
Feng, Juan
Yang, Wenming
author_facet Seok, Sungil
Wen, Shuide
Yang, Qiyuan
Feng, Juan
Yang, Wenming
contents The Federal Funds rate in the United States plays a significant role in both domestic and international financial markets. However, research has predominantly focused on the effects of adjustments to the Federal Funds rate rather than on the decision-making process itself. Recent advancements in large language models(LLMs) offer a potential method for reconstructing the original FOMC meetings, which are responsible for setting the Federal Funds rate. In this paper, we propose a five-stage FOMC meeting simulation framework, MiniFed, which employs LLM agents to simulate real-world FOMC meeting members and optimize the FOMC structure. This framework effectively revitalizes the FOMC meeting process and facilitates projections of the Federal Funds rate. Experimental results demonstrate that our proposed MiniFed framework achieves both high accuracy in Federal Funds rate projections and behavioral alignment with the agents' real-world counterparts. Given that few studies have focused on employing LLM agents to simulate large-scale real-world conferences, our work can serve as a benchmark for future developments.
format Preprint
id arxiv_https___arxiv_org_abs_2410_18012
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MiniFed : Integrating LLM-based Agentic-Workflow for Simulating FOMC Meeting
Seok, Sungil
Wen, Shuide
Yang, Qiyuan
Feng, Juan
Yang, Wenming
Social and Information Networks
The Federal Funds rate in the United States plays a significant role in both domestic and international financial markets. However, research has predominantly focused on the effects of adjustments to the Federal Funds rate rather than on the decision-making process itself. Recent advancements in large language models(LLMs) offer a potential method for reconstructing the original FOMC meetings, which are responsible for setting the Federal Funds rate. In this paper, we propose a five-stage FOMC meeting simulation framework, MiniFed, which employs LLM agents to simulate real-world FOMC meeting members and optimize the FOMC structure. This framework effectively revitalizes the FOMC meeting process and facilitates projections of the Federal Funds rate. Experimental results demonstrate that our proposed MiniFed framework achieves both high accuracy in Federal Funds rate projections and behavioral alignment with the agents' real-world counterparts. Given that few studies have focused on employing LLM agents to simulate large-scale real-world conferences, our work can serve as a benchmark for future developments.
title MiniFed : Integrating LLM-based Agentic-Workflow for Simulating FOMC Meeting
topic Social and Information Networks
url https://arxiv.org/abs/2410.18012