Infinite-dimensional statistical manifolds based on a balanced chart (1308.3602v2)
Abstract: We develop a family of infinite-dimensional Banach manifolds of measures on an abstract measurable space, employing charts that are "balanced" between the density and log-density functions. The manifolds, $(\tilde{M}{\lambda},\lambda\in [2,\infty))$, retain many of the features of finite-dimensional information geometry; in particular, the $\alpha$-divergences are of class $C{\lceil\lambda\rceil-1}$, enabling the definition of the Fisher metric and $\alpha$-derivatives of particular classes of vector fields. Manifolds of probability measures, $(M{\lambda},\lambda\in [2,\infty))$, based on centred versions of the charts are shown to be $C{\lceil\lambda \rceil-1}$-embedded submanifolds of the $\tilde{M}{\lambda}$. The Fisher metric is a pseudo-Riemannian metric on $\tilde{M}{\lambda}$. However, when restricted to finite-dimensional embedded submanifolds it becomes a Riemannian metric, allowing the full development of the geometry of $\alpha$-covariant derivatives. $\tilde{M}{\lambda}$ and $M{\lambda}$ provide natural settings for the study and comparison of approximations to posterior distributions in problems of Bayesian estimation.
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