A Gentle Introduction to Optimal Design for Regression Models
- 1 November 2003
- journal article
- Published by Informa UK Limited in The American Statistician
- Vol. 57 (4), 265-267
- https://doi.org/10.1198/0003130032378
Abstract
This article demonstrates and underscores the equivalence between a variance-maximization exercise and the methodology involved in obtaining and verifying the optimal design for a key model function. It thus provides an alternate solution to the variance exercise as well as a means to introduce and illustrate the concepts of optimal design theory and practice in a simple and clear manner.Keywords
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