Estimation of parameters in linear fixed and mixed effects models, under order restrictions on the error variances, is considered in this article. For simplicity of exposition, we shall assume that the error variances are subject to simple order restriction. Similar methodology can be developed for
Canonical reduction of second-order fitted models subject to linear restrictions
β Scribed by Norman R. Draper; Friedrich Pukelsheim
- Book ID
- 104302143
- Publisher
- Elsevier Science
- Year
- 2003
- Tongue
- English
- Weight
- 248 KB
- Volume
- 63
- Category
- Article
- ISSN
- 0167-7152
No coin nor oath required. For personal study only.
β¦ Synopsis
Canonical reduction of second-order response surfaces is a useful technique for ΓΏnding the form and shape of surfaces and often for discovering redundancies that enable the surface to be expressible in a simpler form with fewer canonical predictor variables than there are original predictor variables. Canonical reduction of models subject to linear restrictions has received little attention, possibly due to the apparent di culty of performing it. An important special application is when the predictor variables are mixture ingredients that must sum to a constant; other linear restrictions may also be encountered in such problems. A possible di culty in interpretation is that the stationary point may fall outside the permissible restricted space. Here, techniques for performing such a canonical reduction are given, and two mixture examples in the literature are re-examined, and canonically reduced, to illustrate what canonical reduction can and cannot provide.
π SIMILAR VOLUMES
Some new results are presented concerning the explicit stationary solution of multidimensional second order dynamical systems with a very general inertial non-linearity and subjected to a wide-band random external excitation. Canonical form is used to describe this non-linear Hamiltonian dynamical s