This paper discusses the evaluation of an implemented user model in ICICLE, an instruction system for users writing in a second
language. We show that in the task of disambiguating natural language parses, a blended model combining overlay techniques
with user stereotyping representing typical linguistic acquisition sequences successfully captures user individuality while
supplementing incomplete information with stereotypic reasoning.