Article ID Journal Published Year Pages File Type
418944 Discrete Applied Mathematics 2008 17 Pages PDF
Abstract

We consider {0,1}n{0,1}n as a sample space with a probability measure on it, thus making pseudo-Boolean functions into random variables. We then derive explicit formulas for approximating a pseudo-Boolean random variable by a linear function if the measure is permutation-invariant, and by a function of degree at most k if the measure is a product measure. These formulas generalize results due to Hammer–Holzman and Grabisch–Marichal–Roubens. We also derive a formula for the best faithful linear approximation that extends a result due to Charnes–Golany–Keane–Rousseau concerning generalized Shapley values. We show that a theorem of Hammer–Holzman that states that a pseudo-Boolean function and its best approximation of degree at most k have the same derivatives up to order k does not generalize to this setting for arbitrary probability measures, but does generalize if the probability measure is a product measure.

Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics
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