Can a GPT4-Powered AI Agent Be a Good Enough Performance Attribution Analyst?

Bruno de Melo
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Abstract

Performance attribution analysis, defined as the process of explaining the drivers of the excess performance of an investment portfolio against a benchmark, stands as a significant aspect of portfolio management and plays a crucial role in the investment decision-making process, particularly within the fund management industry. Rooted in a solid financial and mathematical framework, the importance and methodologies of this analytical technique are extensively documented across numerous academic research papers and books. The integration of large language models (LLMs) and AI agents marks a groundbreaking development in this field. These agents are designed to automate and enhance the performance attribution analysis by accurately calculating and analyzing portfolio performances against benchmarks. In this study, we introduce the application of an AI Agent for a variety of essential performance attribution tasks, including the analysis of performance drivers and utilizing LLMs as calculation engine for multi-level attribution analysis and question-answer (QA) exercises. Leveraging advanced prompt engineering techniques such as Chain-of-Thought (CoT) and Plan and Solve (PS), and employing a standard agent framework from LangChain, the research achieves promising results: it achieves accuracy rates exceeding 93% in analyzing performance drivers, attains 100% in multi-level attribution calculations, and surpasses 84% accuracy in QA exercises that simulate official examination standards. These findings affirm the impactful role of AI agents, prompt engineering and evaluation in advancing portfolio management processes, highlighting a significant advancement in the practical application and evaluation of AI technologies within the domain.
由 GPT4 驱动的人工智能代理能成为足够优秀的绩效归因分析师吗?
业绩归因分析被定义为解释投资组合相对于基准的超额业绩的驱动因素的过程,是投资组合管理的一个重要方面,在投资决策过程中发挥着至关重要的作用,尤其是在基金管理行业。这项分析技术植根于坚实的金融和数学框架,其重要性和方法论在众多学术研究论文和书籍中都有广泛记载。大型语言模型(LLM)与人工智能代理的结合标志着这一领域的突破性发展。这些代理旨在通过对照基准准确计算和分析投资组合的表现,从而自动化和增强表现归因分析。在本研究中,我们介绍了人工智能代理在各种基本绩效归因任务中的应用,包括绩效驱动因素分析以及利用LLMs 作为计算引擎进行多层次归因分析和问题解答(QA)练习。这项研究利用先进的提示工程技术,如思维链(CoT)和计划与求解(PS),并采用 LangChain 的标准代理框架,取得了令人鼓舞的成果:在分析绩效驱动因素方面,准确率超过 93%;在多级归因计算方面,准确率达到 100%;在模拟官方考试标准的 QA 练习方面,准确率超过 84%。这些研究结果肯定了人工智能代理、快速工程和评估在推进投资组合管理过程中的重要作用,突出表明人工智能技术在该领域的实际应用和评估方面取得了重大进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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