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OverviewA well-designed experiment is an efficient method of learning about the world. Because experiments in the field and in the laboratory cannot avoid random error, statistical methods are essential for their efficient design and analysis. In this book, the fundamentals of optimum experimental design theory are presented. In the first part of the part of the book, the advantages of a statistical approach to the design of experiments are discussed, and the ideas of models, least squares fitting, and optimum experimental designs are introduced. The second part presents a more detailed discussion of the general theory of optimum design and an evaluation of various criteria that may be appropriate for designing experiments. Specific experiments are detailed and algorithms for the construction of designs are given.Each chapter is a self-contained topic, illustrated with examples drawn from science and engineering. Little previous statistical knowledge is assumed, and the derivation of mathematical results has been avoided. This book should be of interest to everyone concerned with designing efficient experiments in the laboratory or in the industry. Full Product DetailsAuthor: A. C. Atkinson (Statistical and Mathematical Sciences Department, Statistical and Mathematical Sciences Department, London School of Economics) , A. N. Donev (Applied Statistics Research Unit, Applied Statistics Research Unit, University of Kent)Publisher: Oxford University Press Imprint: Clarendon Press Volume: 8 Dimensions: Width: 15.90cm , Height: 2.40cm , Length: 24.10cm Weight: 0.650kg ISBN: 9780198522546ISBN 10: 0198522541 Pages: 344 Publication Date: 20 August 1992 Audience: Professional and scholarly , Professional & Vocational Format: Hardback Publisher's Status: Active Availability: To order ![]() Stock availability from the supplier is unknown. We will order it for you and ship this item to you once it is received by us. Table of ContentsPart I. Fundamentals; Introduction; Some key ideas; Experimental strategies; The choice of a model; Models and least squares; Criteria for a good experiment; Standard designs; The analysis of experiments; Part II. Theory and applications; Optimum design theory; Criteria of optimality; Experiments with both qualitative and quantitative factors; Blocking response surface designs; Restricted region designs; Failure of the experiment and design augmentation; Non-linear models; Optimum Bayesian design; Discrimination between models; Composite design criteria; Further topics.Reviews...a condensed but authoritative statistical overview of the practice and theory of modelling, designing and analysing systematic experiments ... The techniques, many of which were developed by the authors, are clearly described and demonstrated in examples which are mainly of an industrial type. * P.J. Laycock, University of Manchester, Short Book Reviews (Publication of the International Statistical Institute) * The book is well laid out and is as beautifully produced as we have come to expect from the Oxford Statistical Science Series ... statisticians experienced in the design of experiments will undoubtedly find this book a thought-provoking reminder always to consider the objectives when designing experiments. * Times Higher Education Supplement * The book is well laid out and is as beautifully produced as we have come to expect from the Oxford Statistical Science Series, in which this is the eighth volume. . . . a thought-provoking reminder always to consider the objectives when designing experiments. --The Times Higher Education Supplement<br> A very interesting book. It should be read by every graduate student and by every statistician who designs or intends to design experiments. --Technometrics<br> If you are a believer in D-optimality, or at least wish to act like one, you will find this book excellent....Provides a good basis for a semester's course... --Journal of the American Statistical Association<br> Author InformationTab Content 6Author Website:Countries AvailableAll regions |