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Cross-Stock Predictability via LLM-Augmented Semantic Networks

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  • Yikuan Huang
  • Zheqi Fan
  • Kaiqi Hu
  • Yifan Ye

Abstract

Text-based financial networks are increasingly used to study cross-stock return predictability. A common approach constructs links from similarities in firms' disclosure embeddings, but such networks often contain spurious edges because textual proximity does not necessarily imply economic connection. We propose a two-stage framework that first builds a sparse candidate graph from 10-K embeddings and then uses a large language model to classify and filter candidate edges according to their economic relations. The refined graph is used to aggregate pair-level mean-reversion signals into stock-level trading signals with relation-aware and distance-based weights. In a backtest on S&P 500 constituents from 2011 to 2019, LLM-based edge filtering improves the long-short Sharpe ratio from 0.742 to 0.820 and reduces maximum drawdown from $-$10.47% to $-$7.85%. These results suggest that LLM-based reasoning can improve the economic fidelity of text-derived financial networks and strengthen cross-stock predictability.

Suggested Citation

  • Yikuan Huang & Zheqi Fan & Kaiqi Hu & Yifan Ye, 2026. "Cross-Stock Predictability via LLM-Augmented Semantic Networks," Papers 2604.19476, arXiv.org, revised Apr 2026.
  • Handle: RePEc:arx:papers:2604.19476
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    File URL: http://arxiv.org/pdf/2604.19476
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