Alexandre V. Antonov, Koushik Balasubramanian, Alexander Lipton, Marcos Lopez de Prado
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A Geometric Approach To Asset Allocation With Investor Views
In this article, a geometric approach to incorporating investor views in
portfolio construction is presented. In particular, the proposed approach
utilizes the notion of generalized Wasserstein barycenter (GWB) to combine the
statistical information about asset returns with investor views to obtain an
updated estimate of the asset drifts and covariance, which are then fed into a
mean-variance optimizer as inputs. Quantitative comparisons of the proposed
geometric approach with the conventional Black-Litterman model (and a closely
related variant) are presented. The proposed geometric approach provides
investors with more flexibility in specifying their confidence in their views
than conventional Black-Litterman model-based approaches. The geometric
approach also rewards the investors more for making correct decisions than
conventional BL based approaches. We provide empirical and theoretical
justifications for our claim.