基于反射式 LLM 的代理指导零投篮加密货币交易

Yuan Li, Bingqiao Luo, Qian Wang, Nuo Chen, Xu Liu, Bingsheng He
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引用次数: 0

摘要

大型语言模型(LLM)在金融交易中的应用主要集中在股票市场,以帮助做出经济和金融决策。然而,加密货币市场因其链上数据的透明度和新闻等链外信号的关键影响而带来的独特机遇,在很大程度上仍未被 LLM 发掘。这项工作旨在通过开发基于 LLM 的交易代理 CryptoTrade 来弥补这一差距,CryptoTrade 将链上和链下数据的分析独特地结合在一起。这种方法利用了链上数据的透明度和不变性,以及链下信号的及时性和影响力,提供了对加密货币市场的全面概述。CryptoTrade 包含一个专门设计的反射机制,通过分析之前的交易决策结果来完善每日的交易决策。这项研究有两个重大贡献。首先,它拓宽了 LLM 在加密货币交易领域的适用性。其次,它为加密货币交易策略建立了一个基准。通过大量实验,CryptoTrade 与传统交易策略和时间序列基准相比,在各种加密货币和市场条件下实现收益最大化方面表现出色。我们的代码和数据可在以下网址获取:\url{https://anonymous.4open.science/r/CryptoTrade-Public-92FC/}。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Reflective LLM-based Agent to Guide Zero-shot Cryptocurrency Trading
The utilization of Large Language Models (LLMs) in financial trading has primarily been concentrated within the stock market, aiding in economic and financial decisions. Yet, the unique opportunities presented by the cryptocurrency market, noted for its on-chain data's transparency and the critical influence of off-chain signals like news, remain largely untapped by LLMs. This work aims to bridge the gap by developing an LLM-based trading agent, CryptoTrade, which uniquely combines the analysis of on-chain and off-chain data. This approach leverages the transparency and immutability of on-chain data, as well as the timeliness and influence of off-chain signals, providing a comprehensive overview of the cryptocurrency market. CryptoTrade incorporates a reflective mechanism specifically engineered to refine its daily trading decisions by analyzing the outcomes of prior trading decisions. This research makes two significant contributions. Firstly, it broadens the applicability of LLMs to the domain of cryptocurrency trading. Secondly, it establishes a benchmark for cryptocurrency trading strategies. Through extensive experiments, CryptoTrade has demonstrated superior performance in maximizing returns compared to traditional trading strategies and time-series baselines across various cryptocurrencies and market conditions. Our code and data are available at \url{https://anonymous.4open.science/r/CryptoTrade-Public-92FC/}.
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