The Minimum L2-Distance Projection onto the Canonical Simplex: A Simple Algorithm

Abstract

We consider the minimum distance projection in the L2-norm from an arbitrary point in an n-dimensional, Euclidian space onto the canonical simplex. It is shown that this problem reduces to a univariate problem that can be solved by a simple algorithm. This optimization problem occurs in the setting of credit risk, where one has stochastic matrices that describe transition probabilities between different credit ratings, and one wants to determine the roots of these matrices, or close approximations to them.

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