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A Bipartite Graph Approach to U.S.-China Cross-Market Return Forecasting

arXiv cs.LG / 3/12/2026

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Key Points

  • The paper introduces a directed bipartite graph that uses non-overlapping US and China market hours to model time-ordered cross-market predictive linkages for stock returns.
  • Edges in the graph are selected via rolling-window hypothesis testing, yielding a sparse, economically interpretable feature-selection layer for downstream ML models.
  • The authors apply regularized and ensemble learning methods to forecast open-to-close returns using lagged information from the foreign market.
  • A key empirical finding is a pronounced directional asymmetry: US previous-close-to-close returns strongly predict Chinese intraday returns, while the reverse effect is limited.
  • The approach demonstrates how structured ML can uncover cross-market dependencies with interpretability, with implications for cross-market forecasting and risk management.

Abstract

This paper studies cross-market return predictability through a machine learning framework that preserves economic structure. Exploiting the non-overlapping trading hours of the U.S. and Chinese equity markets, we construct a directed bipartite graph that captures time-ordered predictive linkages between stocks across markets. Edges are selected via rolling-window hypothesis testing, and the resulting graph serves as a sparse, economically interpretable feature-selection layer for downstream machine learning models. We apply a range of regularized and ensemble methods to forecast open-to-close returns using lagged foreign-market information. Our results reveal a pronounced directional asymmetry: U.S. previous-close-to-close returns contain substantial predictive information for Chinese intraday returns, whereas the reverse effect is limited. This informational asymmetry translates into economically meaningful performance differences and highlights how structured machine learning frameworks can uncover cross-market dependencies while maintaining interpretability.