A1 Refereed original research article in a scientific journal

Design and cost optimization for hierarchical data




AuthorsKari Tokola, Andreas Lundell, Jaakko Nevalainen, Hannu Oja

PublisherWILEY-BLACKWELL

Publication year2014

JournalStatistica Neerlandica

Journal name in sourceSTATISTICA NEERLANDICA

Journal acronymSTAT NEERL

Volume68

Issue2

First page 130

Last page148

Number of pages19

ISSN0039-0402

DOIhttps://doi.org/10.1111/stan.12026


Abstract

In this paper, we consider balanced hierarchical data designs for both one-sample and two-sample (two-treatment) location problems. The variances of the relevant estimates and the powers of the tests strongly depend on the data structure through the variance components at each hierarchical level. Also, the costs of a design may depend on the number of units at different hierarchy levels, and these costs may be different for the two treatments. Finally, the number of units at different levels may be restricted by several constraints. Knowledge of the variance components, the costs at each level, and the constraints allow us to find the optimal design. Solving such problems often requires advanced optimization tools and techniques, which we briefly explain in the paper. We develop new analytical tools for sample size calculations and cost optimization and apply our method to a data set on Baltic herring.




Last updated on 2024-26-11 at 20:09