Distributionally robust risk evaluation with a causality constraint and structural information
- URL: http://arxiv.org/abs/2203.10571v4
- Date: Thu, 8 Aug 2024 08:54:59 GMT
- Title: Distributionally robust risk evaluation with a causality constraint and structural information
- Authors: Bingyan Han,
- Abstract summary: We approximate test functions by neural networks and prove the sample complexity with Rademacher complexity.
Our framework outperforms the classic counterparts in the distributionally robust portfolio selection problem.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This work studies the distributionally robust evaluation of expected values over temporal data. A set of alternative measures is characterized by the causal optimal transport. We prove the strong duality and recast the causality constraint as minimization over an infinite-dimensional test function space. We approximate test functions by neural networks and prove the sample complexity with Rademacher complexity. An example is given to validate the feasibility of technical assumptions. Moreover, when structural information is available to further restrict the ambiguity set, we prove the dual formulation and provide efficient optimization methods. Our framework outperforms the classic counterparts in the distributionally robust portfolio selection problem. The connection with the naive strategy is also investigated numerically.
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