other,22-8-A94-1011,bq lends some support to the use of more <term> linguistically sophisticated representations </term> for <term> document classification </term>
other,8-5-A94-1011,bq leads us to consider the assignment of <term> descriptors </term> from individual <term> phrases </term>
tech,6-1-A94-1011,bq use of <term> NLP techniques </term> for <term> document classification </term> has not produced significant improvements
tech,15-3-A94-1011,bq is presented which involves using a <term> statistical POS tagger </term> in conjunction with <term> unsupervised
lr,8-3-A94-1011,bq <term> linguistic annotation </term> to <term> corpora </term> is presented which involves using
other,16-5-A94-1011,bq phrases </term> rather than from the <term> weighted sum </term> of a <term> word set representation
other,15-4-A94-1011,bq representation of documents </term> over a <term> word set based representation </term> of them is that <term> linguistically
other,8-4-A94-1011,bq distinguishing features of a more <term> linguistically sophisticated representation of documents </term> over a <term> word set based representation
tech,26-7-A94-1011,bq representations </term> , and show that a <term> statistically fitted rule-based model </term> provides significantly improved performance
other,11-5-A94-1011,bq <term> descriptors </term> from individual <term> phrases </term> rather than from the <term> weighted
other,33-4-A94-1011,bq frequently individually good predictors of <term> document descriptors ( keywords ) </term> than single <term> words </term> are
tech,18-9-A94-1011,bq check </term> , which is creating a <term> PC based tool </term> to be used in the <term> technical
other,5-3-A94-1011,bq </term> . A novel method for adding <term> linguistic annotation </term> to <term> corpora </term> is presented
tech,21-3-A94-1011,bq POS tagger </term> in conjunction with <term> unsupervised structure finding methods </term> to derive notions of <term> noun group
lr,52-3-A94-1011,bq annotation </term> , and does not require a <term> pre-tagged corpus </term> to fit . One of the distinguishing
measure(ment),12-6-A94-1011,bq high-precision <term> rules </term> can result in a <term> low precision </term> when used together , and develop
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