Designing Agentic AI-Based Screening for Portfolio Investment
AI 摘要
设计基于LLM的智能AI选股平台,提升投资组合的夏普比率。
主要贡献
- 提出基于LLM的智能选股平台
- 引入“理性筛选”概念并证明其有效性
- 经验证优于传统选股方法
方法论
使用LLM构建筛选和情感分析agent,通过协商生成买卖信号,再用高维精度矩阵估计权重。
原文摘要
We introduce a new agentic artificial intelligence (AI) platform for portfolio management. Our architecture consists of three layers. First, two large language model (LLM) agents are assigned specialized tasks: one agent screens for firms with desirable fundamentals, while a sentiment analysis agent screens for firms with desirable news. Second, these agents deliberate to generate and agree upon buy and sell signals from a large portfolio, substantially narrowing the pool of candidate assets. Finally, we apply a high-dimensional precision matrix estimation procedure to determine optimal portfolio weights. A defining theoretical feature of our framework is that the number of assets in the portfolio is itself a random variable, realized through the screening process. We introduce the concept of sensible screening and establish that, under mild screening errors, the squared Sharpe ratio of the screened portfolio consistently estimates its target. Empirically, our method achieves superior Sharpe ratios relative to an unscreened baseline portfolio and to conventional screening approaches, evaluated on S&P 500 data over the period 2020--2024.