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Leveraging LLMS for Top-Down Sector Allocation In Automated Trading

Leveraging LLMS for Top-Down Sector Allocation In Automated Trading ArXiv ID: 2503.09647 “View on arXiv” Authors: Unknown Abstract This paper introduces a methodology leveraging Large Language Models (LLMs) for sector-level portfolio allocation through systematic analysis of macroeconomic conditions and market sentiment. Our framework emphasizes top-down sector allocation by processing multiple data streams simultaneously, including policy documents, economic indicators, and sentiment patterns. Empirical results demonstrate superior risk-adjusted returns compared to traditional cross momentum strategies, achieving a Sharpe ratio of 2.51 and portfolio return of 8.79% versus -0.61 and -1.39% respectively. These results suggest that LLM-based systematic macro analysis presents a viable approach for enhancing automated portfolio allocation decisions at the sector level. ...

March 12, 2025 · 2 min · Research Team