QuantAgent:通过自我完善大型语言模型寻找交易圣杯

Saizhuo Wang, Hang Yuan, Lionel M. Ni, Jian Guo
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摘要

基于大型语言模型(LLM)的自主代理(Autonomous Agent)能够制定计划并应对现实世界中的挑战,因此受到了广泛关注。核心挑战包括为代理的学习过程高效地构建和整合特定领域的知识库。本文引入了一个原则性框架来应对这一挑战,该框架由一个双层循环组成。在内层循环中,代理通过从知识库中汲取知识来完善自己的反应,而在外层循环中,这些反应将在真实世界的场景中进行测试,以自动增强知识库的新见解。实证结果表明,QuantAgent 有能力发现可行的金融信号并提高金融预测的准确性。
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QuantAgent: Seeking Holy Grail in Trading by Self-Improving Large Language Model
Autonomous agents based on Large Language Models (LLMs) that devise plans and tackle real-world challenges have gained prominence.However, tailoring these agents for specialized domains like quantitative investment remains a formidable task. The core challenge involves efficiently building and integrating a domain-specific knowledge base for the agent's learning process. This paper introduces a principled framework to address this challenge, comprising a two-layer loop.In the inner loop, the agent refines its responses by drawing from its knowledge base, while in the outer loop, these responses are tested in real-world scenarios to automatically enhance the knowledge base with new insights.We demonstrate that our approach enables the agent to progressively approximate optimal behavior with provable efficiency.Furthermore, we instantiate this framework through an autonomous agent for mining trading signals named QuantAgent. Empirical results showcase QuantAgent's capability in uncovering viable financial signals and enhancing the accuracy of financial forecasts.
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