Modeling Summarization Assessment Strategies with LSA
نویسنده
چکیده
This paper presents a model based on LSA which attempts to simulate the way humans assess student summaries. It is based on the automatic detection of 5 cognitive operations that student may use in writing a summary. Comparisons with data from 33 human raters show the strengths and limits of this approach.
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