Title of article :
An infinite-dimensional statistical manifold modelled
on Hilbert space
Author/Authors :
Nigel J. Newton، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
We construct an infinite-dimensional Hilbert manifold of probability measures on an abstract measurable
space. The manifold, M, retains the first- and second-order features of finite-dimensional information
geometry: the α-divergences admit first derivatives and mixed second derivatives, enabling the definition
of the Fisher metric as a pseudo-Riemannian metric. This is enough for many applications; for example,
it justifies certain projections of Markov processes onto finite-dimensional submanifolds in recursive estimation
problems. M was constructed with the Fenchel–Legendre transform between Kullback–Leibler
divergences, and its role in Bayesian estimation, in mind. This transform retains, on M, the symmetry of
the finite-dimensional case. Many of the manifolds of finite-dimensional information geometry are shown
to be C
∞-embedded submanifolds of M. In establishing this, we provide a framework in which many of
the formal results of the finite-dimensional subject can be proved with full rigour.
© 2012 Elsevier Inc. All rights reserved
Keywords :
Bayesian estimation , Fenchel–Legendre transform , Fisher metric , Hilbert manifold , Information theory , Information geometry
Journal title :
Journal of Functional Analysis
Journal title :
Journal of Functional Analysis