We present the first application of modern Hopfield networks to the problem of portfolio optimization. We performed an extensive study based on combinatorial purged cross-validation over several datasets and compared our results to both traditional and deep-learning-based methods for portfolio selection. Compared to state-of-the-art deep-learning methods such as Long-Short Term Memory networks and Transformers, we find that the proposed approach performs on par or better, while providing faster training times and better stability. Our results show that Modern Hopfield Networks represent a promising approach to portfolio optimization, allowing for an efficient, scalable, and robust solution for asset allocation, risk management, and dynamic rebalancing.
Hopfield networks for asset allocation / Nicolini, Carlo; Gopalan, Monisha; Lepri, Bruno; Staiano, Jacopo. - (2024), pp. 19-26. (Intervento presentato al convegno ICAIF 2024 tenutosi a New York City nel 14th-17th November 2024) [10.1145/3677052.3698605].
Hopfield networks for asset allocation
Lepri, BrunoPenultimo
;Staiano, JacopoUltimo
2024-01-01
Abstract
We present the first application of modern Hopfield networks to the problem of portfolio optimization. We performed an extensive study based on combinatorial purged cross-validation over several datasets and compared our results to both traditional and deep-learning-based methods for portfolio selection. Compared to state-of-the-art deep-learning methods such as Long-Short Term Memory networks and Transformers, we find that the proposed approach performs on par or better, while providing faster training times and better stability. Our results show that Modern Hopfield Networks represent a promising approach to portfolio optimization, allowing for an efficient, scalable, and robust solution for asset allocation, risk management, and dynamic rebalancing.File | Dimensione | Formato | |
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