Maximum Entropy and Bayesian Methods: Boise, Idaho, USA, 1997 Proceedings of the 17th International Workshop on Maximum Entropy and Bayes by G. EricksonMaximum Entropy and Bayesian Methods: Boise, Idaho, USA, 1997 Proceedings of the 17th International Workshop on Maximum Entropy and Bayes by G. Erickson

Maximum Entropy and Bayesian Methods: Boise, Idaho, USA, 1997 Proceedings of the 17th International…

byG. Erickson, Joshua T. Rychert, C.R. Smith

Paperback | October 13, 2012

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This volume has its origin in the Seventeenth International Workshop on Maximum Entropy and Bayesian Methods, MAXENT 97. The workshop was held at Boise State University in Boise, Idaho, on August 4 -8, 1997. As in the past, the purpose of the workshop was to bring together researchers in different fields to present papers on applications of Bayesian methods (these include maximum entropy) in science, engineering, medicine, economics, and many other disciplines. Thanks to significant theoretical advances and the personal computer, much progress has been made since our first Workshop in 1981. As indicated by several papers in these proceedings, the subject has matured to a stage in which computational algorithms are the objects of interest, the thrust being on feasibility, efficiency and innovation. Though applications are proliferating at a staggering rate, some in areas that hardly existed a decade ago, it is pleasing that due attention is still being paid to foundations of the subject. The following list of descriptors, applicable to papers in this volume, gives a sense of its contents: deconvolution, inverse problems, instrument (point-spread) function, model comparison, multi sensor data fusion, image processing, tomography, reconstruction, deformable models, pattern recognition, classification and group analysis, segmentation/edge detection, brain shape, marginalization, algorithms, complexity, Ockham's razor as an inference tool, foundations of probability theory, symmetry, history of probability theory and computability. MAXENT 97 and these proceedings could not have been brought to final form without the support and help of a number of people.
Title:Maximum Entropy and Bayesian Methods: Boise, Idaho, USA, 1997 Proceedings of the 17th International…Format:PaperbackDimensions:302 pages, 24 × 16 × 0.02 inPublished:October 13, 2012Publisher:Springer-Verlag/Sci-Tech/TradeLanguage:English

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ISBN - 10:9401061114

ISBN - 13:9789401061117

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Table of Contents

In Memory of Edwin T. Jaynes. Preface. Massive Inference and Maximum Entropy; J. Skilling. CV-NP Bayesianism by MCMC; C. Rodriguez. Which Algorithms are Feasible? A MAXENT Approach; D.E. Cooke, et al. Maximum Entropy, Likelihood and Uncertainty: A Comparison; A. Golan. Probabilistic Methods for Data Fusion; A. Mohammed-Djafari. Whence the Laws of Probability? A.J.M. Garrett. Bayesian Group Analysis; W. von der Linden, et al. Symmetry-Group Justification of Maximum Entropy Method and Generalized Maximum Entropy Methods in Image Processing; O. Kosheleva. Probability Synthesis, How to Express Probabilities in Terms of Each Other; A.J.M. Garrett. Inversion Based on Computational Simulations; K. Hanson, et al. Model Comparison with Energy Confinement Data From Large Fusion Experiments; R. Preuss, et al. Deconvolution Based on Experimentally Determined Apparatus Functions; V. Dose, et al. A Bayesian Approach for the Determination of the Charge Density from Elastic Electron Scattering Data; A. Mohammad-Djafari, H.G. Miller. Integrated Deformable Boundary Finding Using Bayesian Strategies; A. Chakraborty, J. Duncan. Shape Reconstruction in X-Ray Tomography from a Small Number of Projections Using Deformable Models; A. Mohammad-Djafari, K. Sauer. An Empirical Model of Brain Shape; J. Gee, L. Le Briquer. Difficulties Applying Blind Source Separation Techniques to EEG and MEG; K.H. Knuth. The History of Probability Theory; A.J.M. Garrett. We Must Choose the Simplest Physical Theory: Levin-Li-Vitányi Theorem and Its Potential Physical Applications; D. Fox, et al. Maximum Entropy and Acausal Processes: Astrophysical Applications and Challenges; M. Koshelev. Computational Exploration of the Entropic Prior Over Spaces of Low Dimensionality;H.E. Fitzgerald, E.G. Larson. Environmentally-Oriented Processing of Multi-Spectral Satellite Images: New Challenges for Bayesian Methods; S.A. Starks, V. Kreinovich. Maximum Entropy Approach to Optimal Sensor Placement for Aerospace Non-Destructive Testing; R. Osegueda, et al. Maximum Entropy Under Uncertainty; H. Gzyl. Subject Index.