An important assumption in IRT model-based adaptive testing is that matchin
g difficulty levels of test items with an examinee's ability makes a test m
ore efficient. According to Lord, "An examinee is measured most effectively
when the test items are neither too difficult nor too easy for him". This
assumption is examined and challenged through a class of one-parameter IRT
models including those of Rasch and the normal ogive. It is found that for
a specific model, the validity of the fundamental assumption is closely rel
ated to the so-called van Zwet tail ordering of symmetric distributions. In
this connection, the cosine distribution serves as the borderline between
those satisfying the assumption and those violating the assumption. Graphic
and numerical illustrations are presented to demonstrate the theoretic res
ults.