Foundations Of Statistical Inference Proceedings Of The Shoresh Conference 2000 2003 Edition at Meripustak

Foundations Of Statistical Inference Proceedings Of The Shoresh Conference 2000 2003 Edition

Books from same Author: Yoel Haitovsky Hans Rudolf Lerche Ya'acov Ritov

Books from same Publisher: Springer

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  • General Information  
    Author(s)Yoel Haitovsky Hans Rudolf Lerche Ya'acov Ritov
    PublisherSpringer
    ISBN9783790800470
    Pages230
    BindingPaperback
    LanguageEnglish
    Publish YearAugust 2003

    Description

    Springer Foundations Of Statistical Inference Proceedings Of The Shoresh Conference 2000 2003 Edition by Yoel Haitovsky Hans Rudolf Lerche Ya'acov Ritov

    This volume is a collection of papers presented at a conference held in Shoresh Holiday Resort near Jerusalem Israel in December 2000 organized by the Israeli Ministry of Science Culture and Sport. The theme of the conference was "Foundation of Statistical Inference: Applications in the Medical and Social Sciences and in Industry and the Interface of Computer Sciences". The following is a quotation from the Program and Abstract booklet of the conference. "Over the past several decades the field of statistics has seen tremendous growth and development in theory and methodology. At the same time the advent of computers has facilitated the use of modern statistics in all branches of science making statistics even more interdisciplinary than in the past; statistics thus has become strongly rooted in all empirical research in the medical social and engineering sciences. The abundance of computer programs and the variety of methods available to users brought to light the critical issues of choosing models and given a data set the methods most suitable for its analysis. Mathematical statisticians have devoted a great deal of effort to studying the appropriateness of models for various types of data and defining the conditions under which a particular method work. " In 1985 an international conference with a similar title* was held in Is rael. It provided a platform for a formal debate between the two main schools of thought in Statistics the Bayesian and the Frequentists. Table of contents : I. Identification with Incomplete Observations Data Mining.- Bounding Entries in Multi-way Contingency Tables Given aSet of Marginal Totals.- Identification and Estimation with Incomplete Data.- Computational Information Retrieval.- Studying Treatment Response to Inform Treatment Choice.- II. Bayesian Methods and Modelling.- Some Interactive Decision Problems Emerging in Statistical Games.- Probabilistic Modelling: An Historical andPhilosophical Digression.- A Bayesian View on Sampling the 2 x 2 Table.- Bayesian Designs for Binomial Experiments.- On the Second Order Minimax Improvement of the Sample Mean in the Estimation of a Mean Value of the Exponential Dispersion Family.- Bayesian Analysis of Cell Migration !Linking Experimental Data and Theoretical Models.- III. Testing Goodness of Fit and Randomness.- Sequential Bayes Detection of Trend Changes.- Box!Cox Transformation for Semiparametric Comparison of Two Samples.- Minimax Nonparametric Goodness-of-Fit Testing.- Testing Randomness on the Basis of theNumber of Different Patterns.- The 7r* Index as a New Alternative for Assessing Goodness of Fit of Logistic Regression.- IV. Statistics of Stationary Processes.- Consistent Estimation of Early and Frequent Change Points.- Asymptotic Behaviour of Estimators of the Parameters of Nearly Unstable INAR(1) Models.- Guessing the Output of a Stationary Binary Time Series.- Asymptotic Expansions for Long-MemoryStationary Gaussian Processes.- Contributors.