SOTAVerified

On the Covariance-Hessian Relation in Evolution Strategies

2018-06-10Code Available0· sign in to hype

Ofer M. Shir, Amir Yehudayoff

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

We consider Evolution Strategies operating only with isotropic Gaussian mutations on positive quadratic objective functions, and investigate the covariance matrix when constructed out of selected individuals by truncation. We prove that the covariance matrix over (1,)-selected decision vectors becomes proportional to the inverse of the landscape Hessian as the population-size increases. This generalizes a previous result that proved an equivalent phenomenon when sampling was assumed to take place in the vicinity of the optimum. It further confirms the classical hypothesis that statistical learning of the landscape is an inherent characteristic of standard Evolution Strategies, and that this distinguishing capability stems only from the usage of isotropic Gaussian mutations and rank-based selection. We provide broad numerical validation for the proven results, and present empirical evidence for its generalization to (,)-selection.

Tasks

Reproductions