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Why Least Squares and Maximum Entropy? An Axiomatic Approach to Inference for Linear Inverse Problems

The Annals of Statistics, Vol. 19, No. 4. (1991), pp. 2032-2066.

X Abstract

An attempt is made to determine the logically consistent rules for selecting a vector from any feasible set defined by linear constraints, when either all n-vectors or those with positive components or the probability vectors are permissible. Some basic postulates are satisfied if and only if the selection rule is to minimize a certain function which, if a "prior guess" is available, is a measure of distance from the prior guess. Two further natural postulates restrict the permissible distances to the author's f-divergences and Bregman's divergences, respectively. As corollaries, axiomatic characterizations of the methods of least squares and minimum discrimination information are arrived at. Alternatively, the latter are also characterized by a postulate of composition consistency. As a special case, a derivation of the method of maximum entropy from a small set of natural axioms is obtained.

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This article has been bookmarked 5 times, initially on 2006-04-15.

2008-04-22 User mdreid , 1 note

Referenced by Banerjee et al's "Clustering with Bregman Divergences".

2008-04-22 01:34:31
Group Statistical Machine Learning
2007-08-21 User ciga
Group Computational_Information_Geometry
2006-04-15 User yaroslavvb , 1 note

Defines unnormalized I-divergence, axioms unifying L2 and I-projections

2006-04-15 23:34:35
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