| Title |
Bayesian model selection of informative hypotheses for repeated measurements |
| Published in |
Journal of mathematical psychology, Vol. 53, p.530-546. |
| Author |
Mulder, Joris; Klugkist, I.G.; Schoot, Rens van de; Meeus, W.H.J.; Selfhout, Maarten; Hoijtink, Herbert |
| Date |
2010-06-11 |
| Language |
English |
| Type |
article |
| Publisher |
Elsevier |
| Abstract |
When analyzing repeated measurements data, researchers often have expectations about the relations
between the measurement means. The expectations can often be formalized using equality and inequality
constraints between (i) the measurement means over time, (ii) the measurement means between groups,
(iii) the means adjusted for time-invariant covariates, and (iv) the means adjusted for time-varying
covariates. The result is a set of informative hypotheses. In this paper, the Bayes factor is used to determine
which hypothesis receives most support from the data. A pivotal element in the Bayesian framework
is the specification of the prior. To avoid subjective prior specification, training data in combination
with restrictions on the measurement means are used to obtain so-called constrained posterior priors. A
simulation study and an empirical example from developmental psychology show that this prior results
in Bayes factors with desirable properties. |
| Publication |
http://igitur-archive.library.uu.nl/fss/2010-0611-200224/UUi... |
| OpenURL |
Search this publication in (your) library |
| Persistent Identifier |
URN:NBN:NL:UI:10-1874-44706 |
| Metadata |
XML |
| Repository |
Utrecht University |