Λέσχη Φίλων Στατιστικής - GrStats forum
AUEB STATS SEMINARS 26/1/2017: Analyzing supersaturated designs for discrete responses via generalized linear models Forumgrstats

Join the forum, it's quick and easy

Λέσχη Φίλων Στατιστικής - GrStats forum
AUEB STATS SEMINARS 26/1/2017: Analyzing supersaturated designs for discrete responses via generalized linear models Forumgrstats
Λέσχη Φίλων Στατιστικής - GrStats forum
Would you like to react to this message? Create an account in a few clicks or log in to continue.
Για προβλήματα εγγραφής και άλλες πληροφορίες επικοινωνήστε με : grstats.forum@gmail.com ή grstats@stat-athens.aueb.gr

Go down
grstats
grstats
Posts : 966
Join date : 2009-10-21
http://stat-athens.aueb.gr/~grstats/

AUEB STATS SEMINARS 26/1/2017: Analyzing supersaturated designs for discrete responses via generalized linear models Empty AUEB STATS SEMINARS 26/1/2017: Analyzing supersaturated designs for discrete responses via generalized linear models

Tue 24 Jan 2017 - 9:46
AUEB STATS SEMINARS 26/1/2017: Analyzing supersaturated designs for discrete responses via generalized linear models 154a637

AUEB STATISTICS SEMINAR SERIES JANUARY 2017

Christina Parpoula
Temporary Lecturer, Department of Statistics, Athens University of Economics and Business

Analyzing supersaturated designs for discrete responses via generalized linear models


THURSDAY 26/1/2017
13:00

ROOM 607, 6th FLOOR,
POSTGRADUATE STUDIES BUILDING
(EVELPIDON & LEFKADOS)

ABSTRACT

A supersaturated design is a factorial design in which the number of factors to be estimated is larger than the available number of experimental runs. The cost and time required for many industrial experimentations can be reduced by using the class of supersaturated designs, since the main goal for such a design is to identify only a few of the factors under consideration that have dominant effects and to do this identification at a minimal cost. While most of the literature on supersaturated designs has focused on the construction of designs and their optimality properties, the data analysis of such designs has not been developed to a great extent. In this paper, we propose a supersaturated design analysis method, by assuming generalized linear models for discrete responses, for analyzing main effects designs and identifying simultaneously the effects that are significant. Empirical study demonstrates that this method performs well with low Type I and Type II error rates. The proposed method is therefore useful as it enables us to use supersaturated designs for analyzing data on discrete response regression models.

Back to top
Permissions in this forum:
You cannot reply to topics in this forum