Statistical learning paradigms traditionally use transitional
probabilities as a measure of statistical distribution within a
language. The current study suggests that alternative metrics
may exist that can account for differences in language
processing ability. Two primed lexical decision tasks are used
to examine the effects of bigram frequency and diversity on
speed and accuracy of word recognition. It is demonstrated
that both frequency and diversity contribute to word
recognition performance; findings and theoretical
implications are discussed.