Large Language Model Agent in Financial Trading: A Survey

Han Ding, Yinheng Li, Junhao Wang, Hang Chen
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Abstract

Trading is a highly competitive task that requires a combination of strategy, knowledge, and psychological fortitude. With the recent success of large language models(LLMs), it is appealing to apply the emerging intelligence of LLM agents in this competitive arena and understanding if they can outperform professional traders. In this survey, we provide a comprehensive review of the current research on using LLMs as agents in financial trading. We summarize the common architecture used in the agent, the data inputs, and the performance of LLM trading agents in backtesting as well as the challenges presented in these research. This survey aims to provide insights into the current state of LLM-based financial trading agents and outline future research directions in this field.
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金融交易中的大型语言模型代理:调查
交易是一项竞争激烈的任务,需要策略、知识和心理承受力的综合运用。随着大型语言模型(LLMs)最近取得的成功,人们希望将 LLM 代理的新兴智能应用于这一竞争激烈的领域,并了解它们能否超越专业交易员。在本调查报告中,我们全面回顾了当前在金融交易中使用 LLM 作为代理的研究。我们总结了代理中使用的通用架构、数据输入、LLM 交易代理在回溯测试中的表现以及研究中面临的挑战。本调查旨在深入了解基于LLM 的金融交易代理的现状,并概述该领域未来的研究方向。
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