2023
DOI: 10.1111/mafi.12389
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Designing universal causal deep learning models: The geometric (Hyper)transformer

Abstract: Several problems in stochastic analysis are defined through their geometry, and preserving that geometric structure is essential to generating meaningful predictions. Nevertheless, how to design principled deep learning (DL) models capable of encoding these geometric structures remains largely unknown. We address this open problem by introducing a universal causal geometric DL framework in which the user specifies a suitable pair of metric spaces and and our framework returns a DL model capable of causally a… Show more

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Cited by 3 publications
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