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.
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