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Titlebook: Maximum Entropy and Bayesian Methods; Santa Fe, New Mexico Kenneth M. Hanson,Richard N. Silver Conference proceedings 1996 Kluwer Academic

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Miao-Dan Wu,William J. Fitzgerald the first edition, and expands coverage of stochastic optim.Optimal control methods are used to determine optimal ways to control a dynamic system. The theoretical work in this field serves as a foundation for the book, which the authors have applied to business management problems developed from t
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Reconstruction of the Probability Density Function Implicit in Option Prices from Incomplete and Nobility density function implicit in option prices from an incomplete and noisy set of option prices. We illustrate the potential of this approach by calculating the implied probability density function from observed S&P 500 index options.
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Hierarchical Bayesian Time Series Models,nalysis is then presented and discussed. Both discrete time and continuous time formulations are discussed. An brief overview of generalizations of the fundamental hierarchical time series model concludes the article.
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The Bootstrap is Inconsistent with Probability Theory, trials of some fixed size. It then proves that for no prior will the BS give the same first two moments as the predictive distribution for all size trials. It ends with an investigation of whether the BS can get the variance correct.
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Continuum Models for Bayesian Image Matching,ential to the inference of the mapping because the image features on which matching is based are sparsely distributed and, consequently, underconstrain the problem. In this paper, we describe the Bayesian approach to image matching and introduce suitable priors based on idealized models of continua.
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https://doi.org/10.1007/978-94-011-5430-7Fitting; Maximum entropy method; Measure; Probability theory; Statistical Physics; Time series; best fit; d
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A Characterization of the Dirichlet Distribution with Application to Learning Bayesian Networks,We provide a new characterization of the Dirichlet distribution. This characterization implies that under assumptions made by several previous authors for learning belief networks, a Dirichlet prior on the parameters is inevitable.
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