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Variance Allocation and Shapley Value (1606.09424v2)

Published 30 Jun 2016 in math.PR, cs.GT, math.ST, and stat.TH

Abstract: Motivated by the problem of utility allocation in a portfolio under a Markowitz mean-variance choice paradigm, we propose an allocation criterion for the variance of the sum of $n$ possibly dependent random variables. This criterion, the Shapley value, requires to translate the problem into a cooperative game. The Shapley value has nice properties, but, in general, is computationally demanding. The main result of this paper shows that in our particular case the Shapley value has a very simple form that can be easily computed. The same criterion is used also to allocate the standard deviation of the sum of $n$ random variables and a conjecture about the relation of the values in the two games is formulated.

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Authors (3)
  1. Riccardo Colini-Baldeschi (17 papers)
  2. Marco Scarsini (32 papers)
  3. Stefano Vaccari (1 paper)
Citations (33)