other,12-10-J05-1003,bq <term> algorithm </term> over the obvious <term> implementation </term> of the <term> boosting approach </term>
other,25-7-J05-1003,bq additional 500,000 <term> features </term> over <term> parse trees </term> that were not included in the original
other,23-7-J05-1003,bq evidence from an additional 500,000 <term> features </term> over <term> parse trees </term> that
tech,2-2-J05-1003,bq probabilistic parser </term> . The base <term> parser </term> produces a set of <term> candidate
measure(ment),14-8-J05-1003,bq </term> , a 13 % relative decrease in <term> F-measure </term> error over the <term> baseline model
other,12-7-J05-1003,bq <term> baseline model </term> ( that of <term> Collins [ 1999 ] </term> ) with evidence from an additional
tech,13-5-J05-1003,bq reranking task </term> , based on the <term> boosting approach </term> to <term> ranking problems </term> described
lr-prod,8-6-J05-1003,bq method </term> to <term> parsing </term> the <term> Wall Street Journal treebank </term> . The <term> method </term> combined
tech,43-12-J05-1003,bq <term> machine translation </term> , or <term> natural language generation </term> . We present a novel <term> method </term>
tech,36-12-J05-1003,bq ranking tasks </term> , for example , <term> speech recognition </term> , <term> machine translation </term>
tech,6-9-J05-1003,bq The article also introduces a new <term> algorithm </term> for the <term> boosting approach </term>
other,7-2-J05-1003,bq <term> parser </term> produces a set of <term> candidate parses </term> for each input <term> sentence </term>
tech,9-9-J05-1003,bq a new <term> algorithm </term> for the <term> boosting approach </term> which takes advantage of the <term>
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