Zum Hauptinhalt springen
Nicht aus der Schweiz? Besuchen Sie lehmanns.de
Optimal Design - S. Silvey

Optimal Design

An Introduction to the Theory for Parameter Estimation

(Autor)

Buch | Softcover
86 Seiten
2013 | Softcover reprint of the original 1st ed. 1980
Springer (Verlag)
978-94-009-5914-9 (ISBN)
CHF 74,85 inkl. MwSt
Prior to the 1970's a substantial literature had accumulated on the theory of optimal design, particularly of optimal linear regression design. To a certain extent the study of the subject had been piecemeal, different criteria of optimality having been studied separately. Also to a certain extent the topic was regarded as being largely of theoretical interest and as having little value for the practising statistician. However during this decade two significant developments occurred. It was observed that the various different optimality criteria had several mathematical properties in common; and general algorithms for constructing optimal design measures were developed. From the first of these there emerged a general theory of remarkable simplicity and the second at least raised the possibility that the theory would have more practical value. With respect to the second point there does remain a limiting factor as far as designs that are optimal for parameter estimation are concerned, and this is that the theory assumes that the model be collected is known a priori. This of course underlying data to is seldom the case in practice and it often happens that designs which are optimal for parameter estimation allow no possibility of model validation. For this reason the theory of design for parameter estimation may well have to be combined with a theory of model validation before its practical potential is fully realized. Nevertheless discussion in this monograph is limited to the theory of design optimal for parameter estimation.

1 Introduction.- 1.1 Historical note.- 1.2 The general problem.- 1.3–1.6 Examples.- 1.7 Discriminating among models.- 2 Linear theory.- 2.1 Definition.- 2.2 Design criteria.- 2.3 A property of criterion functions.- 2.4 Approximate theory.- 3 Approximate theory for linear regression design.- 3.1 The general problem.- 3.2 The set of information matrices.- 3.3 The criterion function.- 3.4 The solution set of design measures.- 3.5 Directional derivatives.- 3.6,3.7 Basic theorems.- 3.8 Example: quadratic regression with a single control variable.- 3.9 Theorem: equivalence of D-and G-optimality.- 3.10 Corollary.- 3.11–3.12 Discussion.- 3.13 Optimal design measures with singular information matrices.- 4 Algorithms.- 4.1 Introduction.- 4.2 Design measure algorithms.- 4.3 The V-algorithm for D-optimality.- 4.4 An example of the use of the W-algorithm.- 4.5 General comments.- 4.6 Convergence considerations.- 4.7 Review.- 4.8 N-observation designs.- 5 Approximate theory—particular criteria.- 5.1 D-optimality.- 5.2 DA- and DS-optimality.- 5.3 A linear criterion function.- 5.4 c-optimality.- 5.5 Examples.- 5.6 Other criteria.- 6 Non-linear problems.- 6.1 Introduction.- 6.2–6.6 Examples.- 7 Sequential designs.- 7.1 Objective.- 7.2 An alternative method.- 7.3 Convergence considerations.- 7.4 Inference from sequentially constructed designs.- Appenddix.- A.1 Concavity results.- A.2 Carathéodory’s Theorem.- A.3 Differentiability.- A.4 Lagrangian theory: duality.

Reihe/Serie Ettore Majorana International Science Series ; 1
Zusatzinfo VIII, 86 p.
Verlagsort Dordrecht
Sprache englisch
Maße 140 x 216 mm
Themenwelt Schulbuch / Wörterbuch
Geisteswissenschaften
Naturwissenschaften
Sozialwissenschaften
ISBN-10 94-009-5914-1 / 9400959141
ISBN-13 978-94-009-5914-9 / 9789400959149
Zustand Neuware
Informationen gemäß Produktsicherheitsverordnung (GPSR)
Haben Sie eine Frage zum Produkt?
Mehr entdecken
aus dem Bereich