6,925 research outputs found

    Concurrent π\pi-vector fields and energy beta-change

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    The present paper deals with an \emph{intrinsic} investigation of the notion of a concurrent π\pi-vector field on the pullback bundle of a Finsler manifold (M,L)(M,L). The effect of the existence of a concurrent π\pi-vector field on some important special Finsler spaces is studied. An intrinsic investigation of a particular β\beta-change, namely the energy β\beta-change ($\widetilde{L}^{2}(x,y)=L^{2}(x,y)+ B^{2}(x,y) with \ B:=g(\bar{\zeta},\bar{\eta});; \bar{\zeta} beingaconcurrent being a concurrent \pi−vectorfield),isestablished.TherelationbetweenthetwoBarthelconnections-vector field), is established. The relation between the two Barthel connections \Gammaand and \widetilde{\Gamma},correspondingtothischange,isfound.Thisrelation,togetherwiththefactthattheCartanandtheBarthelconnectionshavethesamehorizontalandverticalprojectors,enableustostudytheenergy, corresponding to this change, is found. This relation, together with the fact that the Cartan and the Barthel connections have the same horizontal and vertical projectors, enable us to study the energy \beta$-change of the fundamental linear connection in Finsler geometry: the Cartan connection, the Berwald connection, the Chern connection and the Hashiguchi connection. Moreover, the change of their curvature tensors is concluded. It should be pointed out that the present work is formulated in a prospective modern coordinate-free form.Comment: 27 pages, LaTex file, Some typographical errors corrected, Some formulas simpifie

    Quantum Mechanics as Complex Probability Theory

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    Realistic quantum mechanics based on complex probability theory is shown to have a frequency interpretation, to coexist with Bell's theorem, to be linear, to include wavefunctions which are expansions in eigenfunctions of Hermitian operators and to describe both pure and mixed systems. Illustrative examples are given. The quantum version of Bayesian inference is discussed. Postscript version of hep-th/9307019.Comment: 15FSU-SCRI-93-7

    Accelerating Asymptotically Exact MCMC for Computationally Intensive Models via Local Approximations

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    We construct a new framework for accelerating Markov chain Monte Carlo in posterior sampling problems where standard methods are limited by the computational cost of the likelihood, or of numerical models embedded therein. Our approach introduces local approximations of these models into the Metropolis-Hastings kernel, borrowing ideas from deterministic approximation theory, optimization, and experimental design. Previous efforts at integrating approximate models into inference typically sacrifice either the sampler's exactness or efficiency; our work seeks to address these limitations by exploiting useful convergence characteristics of local approximations. We prove the ergodicity of our approximate Markov chain, showing that it samples asymptotically from the \emph{exact} posterior distribution of interest. We describe variations of the algorithm that employ either local polynomial approximations or local Gaussian process regressors. Our theoretical results reinforce the key observation underlying this paper: when the likelihood has some \emph{local} regularity, the number of model evaluations per MCMC step can be greatly reduced without biasing the Monte Carlo average. Numerical experiments demonstrate multiple order-of-magnitude reductions in the number of forward model evaluations used in representative ODE and PDE inference problems, with both synthetic and real data.Comment: A major update of the theory and example
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