NEW CONSTRUCTION OF D-OPTIMAL WEIGHING DESIGNS WITH NON-NEGATIVE CORRELATIONS OF ERRORS
Journal Title: Colloquium Biometricum; Colloquium Biometricum (Online) - Year 2016, Vol 46, Issue
Abstract
In this paper, the regular D-optimal chemical balance weighing designs with equally non-negative correlated errors are considered. Here we study the issues regard to the existence conditions of optimal designs. Presented construction method is based on the set of the incidence matrices of the balanced bipartite weighing designs and the ternary balanced block designs.
Authors and Affiliations
Bronisław Ceranka, Małgorzata Graczyk
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