Distributionally Robust End-to-End Portfolio Construction
- URL: http://arxiv.org/abs/2206.05134v1
- Date: Fri, 10 Jun 2022 14:16:22 GMT
- Title: Distributionally Robust End-to-End Portfolio Construction
- Authors: Giorgio Costa, Garud N. Iyengar
- Abstract summary: We show how to learn the risk-tolerance parameter and the degree of robustness directly from data.
We propose an end-to-end distributionally robust system for portfolio construction.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We propose an end-to-end distributionally robust system for portfolio
construction that integrates the asset return prediction model with a
distributionally robust portfolio optimization model. We also show how to learn
the risk-tolerance parameter and the degree of robustness directly from data.
End-to-end systems have an advantage in that information can be communicated
between the prediction and decision layers during training, allowing the
parameters to be trained for the final task rather than solely for predictive
performance. However, existing end-to-end systems are not able to quantify and
correct for the impact of model risk on the decision layer. Our proposed
distributionally robust end-to-end portfolio selection system explicitly
accounts for the impact of model risk. The decision layer chooses portfolios by
solving a minimax problem where the distribution of the asset returns is
assumed to belong to an ambiguity set centered around a nominal distribution.
Using convex duality, we recast the minimax problem in a form that allows for
efficient training of the end-to-end system.
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