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Dynamic Portfolio Rebalancing: A Hybrid new Model Using GNNs and Pathfinding for Cost Efficiency

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  • Diego Vallarino

Abstract

This paper introduces a novel approach to optimizing portfolio rebalancing by integrating Graph Neural Networks (GNNs) for predicting transaction costs and Dijkstra's algorithm for identifying cost-efficient rebalancing paths. Using historical stock data from prominent technology firms, the GNN is trained to forecast future transaction costs, which are then applied as edge weights in a financial asset graph. Dijkstra's algorithm is used to find the least costly path for reallocating capital between assets. Empirical results show that this hybrid approach significantly reduces transaction costs, offering a powerful tool for portfolio managers, especially in high-frequency trading environments. This methodology demonstrates the potential of combining advanced machine learning techniques with classical optimization algorithms to improve financial decision-making processes. Future research will explore expanding the asset universe and incorporating reinforcement learning for continuous portfolio optimization.

Suggested Citation

  • Diego Vallarino, 2024. "Dynamic Portfolio Rebalancing: A Hybrid new Model Using GNNs and Pathfinding for Cost Efficiency," Papers 2410.01864, arXiv.org.
  • Handle: RePEc:arx:papers:2410.01864
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    File URL: http://arxiv.org/pdf/2410.01864
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    Cited by:

    1. Chaudhari, Saurav L., 2024. "Enhancing Portfolio Rebalancing Efficiency Using Binomial Distribution: A Case Study of Beating the Nifty Index with good CAGR," OSF Preprints u5q97, Center for Open Science.

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