Graph Neural Networks for Forecasting Multivariate Realized Volatility with Spillover Effects
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- Nikolas Michael & Mihai Cucuringu & Sam Howison, 2024. "A GCN-LSTM Approach for ES-mini and VX Futures Forecasting," Papers 2408.05659, arXiv.org.
- Wenbo Ge & Pooia Lalbakhsh & Leigh Isai & Artem Lensky & Hanna Suominen, 2023. "Comparing Deep Learning Models for the Task of Volatility Prediction Using Multivariate Data," Papers 2306.12446, arXiv.org, revised Jun 2023.
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