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  • 1
    Online Resource
    Online Resource
    New York, NY :Springer New York,
    UID:
    almahu_9947362991702882
    Format: IX, 175 p. , online resource.
    ISBN: 9781461220947
    Series Statement: Lecture Notes in Statistics, 160
    Content: About 10 years ago I began studying evaluations of distributions of or­ der statistics from samples with general dependence structure. Analyzing in [78] deterministic inequalities for arbitrary linear combinations of order statistics expressed in terms of sample moments, I observed that we obtain the optimal bounds once we replace the vectors of original coefficients of the linear combinations by the respective Euclidean norm projections onto the convex cone of vectors with nondecreasing coordinates. I further veri­ fied that various optimal evaluations of order and record statistics, derived earlier by use of diverse techniques, may be expressed by means of projec­ tions. In Gajek and Rychlik [32], we formulated for the first time an idea of applying projections onto convex cones for determining accurate moment bounds on the expectations of order statistics. Also for the first time, we presented such evaluations for non parametric families of distributions dif­ ferent from families of arbitrary, symmetric, and nonnegative distributions. We realized that this approach makes it possible to evaluate various func­ tionals of great importance in applied probability and statistics in different restricted families of distributions. The purpose of this monograph is to present the method of using pro­ jections of elements of functional Hilbert spaces onto convex cones for es­ tablishing optimal mean-variance bounds of statistical functionals, and its wide range of applications. This is intended for students, researchers, and practitioners in probability, statistics, and reliability.
    Note: 1 Introduction and Notation -- 1.1 Introduction -- 1.2 Notation -- 2 Basic Notions -- 2.1 Elements of Hilbert Space Theory -- 2.2 Statistical Linear Functionals -- 2.3 Restricted Families of Distributions -- 3 Quantiles -- 3.1 General and Symmetric Distributions -- 3.2 Distributions with Monotone Density and Failure Rate -- 3.3 Distributions with Monotone Density and Failure Rate on the Average -- 3.4 Symmetric Unimodal Distributions -- 3.5 Open Problems -- 4 Order Statistics of Independent Samples -- 4.1 General and Symmetric Distributions -- 4.2 Life Distributions with Decreasing Density and Failure Rate -- 4.3 Distributions with Monotone Density and Failure Rate on the Average -- 4.4 Symmetric Unimodal Distributions -- 4.5 Bias of Quantile Estimates -- 4.6 Open Problems -- 5 Order Statistics of Dependent Observations -- 5.1 Dependent Observations with Given Marginal Distribution -- 5.2 General and Symmetric Distributions -- 5.3 Distributions with Monotone Density and Failure Rate -- 5.4 Distributions with Monotone Density and Failure Rate on the Average -- 5.5 Symmetric Unimodal and U-Shaped Distributions -- 5.6 Bias of Quantile Estimates -- 5.7 Extreme Effect of Dependence -- 5.8 Open Problems -- 6 Records and kth Records -- 6.1 Dependent Identically Distributed Observations -- 6.2 General and Symmetric Distributions -- 6.3 Life Distributions with Decreasing Density and Failure Rate -- 6.4 Increments of Records -- 6.5 Open Problems -- 7 Predictions of Order and Record Statistics -- 7.1 General Distributions -- 7.2 Distributions with Decreasing Density and Failure Rate -- 7.3 Open Problems -- 8 Further Research Directions -- References -- Author Index.
    In: Springer eBooks
    Additional Edition: Printed edition: ISBN 9780387952390
    Language: English
    URL: Volltext  (lizenzpflichtig)
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