N10-1036 |
improve user performance in news
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. Two groups of subjects were
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N10-1036 |
crossdocument IE results . The
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task for each entity using any
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W13-1722 |
that includes the use of novel
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tasks . We derive NLP features
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W15-5618 |
clusters because text annotation and
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tasks are expensive and time
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W13-1722 |
based on specific dimensions of
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. The scores are assigned on
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W13-1722 |
how it motivates the use of a
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task in a reading comprehension
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W13-1722 |
we describe the details of the
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task itself . The summarization
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P03-1048 |
about agreement on the task of
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have been performed before .
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W13-1722 |
<title> Automated Scoring of a
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Summary Writing
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Designed to Measure Reading Comprehension
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N10-1036 |
Through a utility evaluation on
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we have proved that IE techniques
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W13-1722 |
about one of the paragraphs . 3
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Summary Writing
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Task Before describing the automated
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W05-0902 |
level of subjectivity for this `
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' exercise ; more than one third
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N10-1036 |
perform the same time-restricted
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tasks , reading news under different
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N10-1036 |
perform the same time-restricted
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tasks , reading news under different
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W05-0902 |
controls attraction ? ( N ) to the
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task , and that ( 2 ) a decision
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N10-1036 |
realworld tasks . We followed the
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task described in the Integrated
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