Because psychological assessment typically lacks biological gold standards,
it traditionally has relied on clinicians' expert knowledge. A more empiri
cally based approach frequently has applied linear models to data to derive
meaningful constructs and appropriate measures. Statistical inferences are
then used to assess the generality of the findings. This article introduce
s artificial neural networks (ANNs), flexible nonlinear modeling techniques
that test a model's generality by applying its estimates against "future"
data. ANNs have potential for overcoming some shortcomings of linear models
. The basics of ANNs and their applications to psychological assessment are
reviewed. Two examples of clinical decision making are described in which
an ANN is compared with linear models, and the complexity of the network pe
rformance is examined. Issues salient to psychological assessment are addre
ssed.