Automatic Essay Assessment
Thomas K. Landauer, Darrell Laham, and Peter Foltz
Abstract
Computational techniques for scoring essays have recently come into use.
Their bases and development methods raise both old and new measurement
issues. However, coming principally from computer and cognitive sciences,
they have received little attention from the educational measurement
community. We briefly survey the state
of the technology, then describe one such system, the Intelligent
Essay Assessor (IEA). IEA is based largely on Latent Semantic Analysis
(LSA), a machine-learned model that induces the semantic similarity of
words and passages by analysis of large bodies of domain-relevant text.
IEA's dominant variables
are computed from comparisons with pre-scored essays of highly
similar content as measured by LSA. Over many validation studies with a
wide variety of topics and test-takers, IEA correlated with human
graders as well as they correlated
with each other. The technique also supports other educational
applications. Critical measurement questions are posed and
discussed.
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