The effects of five item selection rules-Fisher information (FI), Fisher in
terval information (FII), Fisher information with a posterior distribution
(FIP), Kullback-Leibler information (KL), and Kullback-Leibler information
with a posterior distribution (KLP)-were compared with respect to the effic
iency and precision of trait (theta) estimation at the early stages of comp
uterized adaptive testing (CAT). FII, FIP, KL, and KLP performed marginally
better than Fl at the early stages of CAT for theta = -3 and -2. For tests
longer than 10 items, there appeared to be no precision advantage for any
of the selection rules.