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Computational Probability Applications

  1. Title statementComputational Probability Applications [electronic resource] / edited by Andrew G. Glen, Lawrence M. Leemis.
    PublicationCham : Springer International Publishing : Imprint: Springer, 2017.
    Phys.des.X, 256 p. 78 illus., 10 illus. in color. online resource.
    ISBN9783319433172
    EditionInternational Series in Operations Research & Management Science, ISSN 0884-8289 ; 247
    ContentsAccurate Estimation with One Order Statistic -- On the Inverse Gamma as a Survival Distribution -- Order Statistics in Goodness-of-Fit Testing -- The "Straightforward" Nature of Arrival Rate Estimation? -- Survival Distributions Based on the Incomplete Gamma Function Ratio -- An Inference Methodology for Life Tests with Full Samples or Type II Right Censoring -- Maximum Likelihood Estimation Using Probability Density Functions of Order Statistics -- Notes on Rank Statistics -- Control Chart Constants for Non-Normal Sampling -- Linear Approximations of Probability Density Functions -- Univariate Probability Distributions -- Moment-Ratio Diagrams for Univariate Distributions -- The Distribution of the Kolmogorov-Smirnov, Cramer-von Mises, and Anderson-Darling Test Statistics for Exponential Populations with Estimated Parameters -- Parametric Model Discrimiation for Heavily Censored Survival Data -- Lower Confidence Bounds for System Reliability from Binary Failure Data Using Bootstrapping. .
    Notes to AvailabilityPřístup pouze pro oprávněné uživatele
    Another responsib. Glen, Andrew G.
    Leemis, Lawrence M.
    Another responsib. SpringerLink (Online service)
    Subj. Headings Business. * Operations research. * Decision making. * Probabilities. * Statistics.
    Form, Genre elektronické knihy electronic books
    CountryNěmecko
    Languageangličtina
    Document kindElectronic books
    URLPlný text pro studenty a zaměstnance UPOL
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    This focuses on the developing field of building probability models with the power of symbolic algebra systems. The book combines the uses of symbolic algebra with probabilistic/stochastic application and highlights the applications in a variety of contexts. The research explored in each chapter is unified by the use of A Probability Programming Language (APPL) to achieve the modeling objectives. APPL, as a research tool, enables a probabilist or statistician the ability to explore new ideas, methods, and models. Furthermore, as an open-source language, it sets the foundation for future algorithms to augment the original code.  Computational Probability Applications is comprised of fifteen chapters, each presenting a specific application of computational probability using the APPL modeling and computer language. The chapter topics include using inverse gamma as a survival distribution, linear approximations of probability density functions, and also moment-ratio diagrams for univariate distributions. These works highlight interesting examples, often done by undergraduate students and graduate students that can serve as templates for future work. In addition, this book should appeal to researchers and practitioners in a range of fields including probability, statistics, engineering, finance, neuroscience, and economics.

    Accurate Estimation with One Order Statistic -- On the Inverse Gamma as a Survival Distribution -- Order Statistics in Goodness-of-Fit Testing -- The "Straightforward" Nature of Arrival Rate Estimation? -- Survival Distributions Based on the Incomplete Gamma Function Ratio -- An Inference Methodology for Life Tests with Full Samples or Type II Right Censoring -- Maximum Likelihood Estimation Using Probability Density Functions of Order Statistics -- Notes on Rank Statistics -- Control Chart Constants for Non-Normal Sampling -- Linear Approximations of Probability Density Functions -- Univariate Probability Distributions -- Moment-Ratio Diagrams for Univariate Distributions -- The Distribution of the Kolmogorov-Smirnov, Cramer-von Mises, and Anderson-Darling Test Statistics for Exponential Populations with Estimated Parameters -- Parametric Model Discrimiation for Heavily Censored Survival Data -- Lower Confidence Bounds for System Reliability from Binary Failure Data Using Bootstrapping. .

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