other,23-9-J05-1003,ak the <term> feature space </term> in the <term> parsing data </term> . Experiments show significant efficiency
other,24-2-J05-1003,ak initial <term> ranking </term> of these <term> parses </term> . A second <term> model </term> then
other,25-7-J05-1003,ak additional 500,000 <term> features </term> over <term> parse trees </term> that were not included in the original
other,26-4-J05-1003,ak , without concerns about how these <term> features </term> interact or overlap and without the
other,30-12-J05-1003,ak </term> which are naturally framed as <term> ranking tasks </term> , for example , <term> speech recognition
other,37-4-J05-1003,ak overlap and without the need to define a <term> derivation </term> or a <term> generative model </term>
other,4-7-J05-1003,ak treebank </term> . The method combined the <term> log-likelihood under a baseline model </term> ( that of Collins [ 1999 ] ) with
other,45-4-J05-1003,ak generative model </term> which takes these <term> features </term> into account . We introduce a new
other,7-2-J05-1003,ak base parser </term> produces a set of <term> candidate parses </term> for each <term> input sentence </term>
other,7-5-J05-1003,ak We introduce a new method for the <term> reranking task </term> , based on the <term> boosting approach
tech,1-2-J05-1003,ak <term> probabilistic parser </term> . The <term> base parser </term> produces a set of <term> candidate
tech,11-1-J05-1003,ak which rerank the output of an existing <term> probabilistic parser </term> . The <term> base parser </term> produces
tech,13-5-J05-1003,ak reranking task </term> , based on the <term> boosting approach to ranking problems </term> described in Freund et al. ( 1998
tech,15-10-J05-1003,ak the obvious implementation of the <term> boosting approach </term> . We argue that the method is an
tech,21-11-J05-1003,ak simplicity and efficiency — to work on <term> feature selection methods </term> within <term> log-linear ( maximum-entropy
tech,23-12-J05-1003,ak should be applicable to many other <term> NLP problems </term> which are naturally framed as <term>
tech,3-6-J05-1003,ak Freund et al. ( 1998 ) . We apply the <term> boosting method </term> to parsing the <term> Wall Street Journal
tech,36-12-J05-1003,ak ranking tasks </term> , for example , <term> speech recognition </term> , <term> machine translation </term>
tech,39-12-J05-1003,ak , <term> speech recognition </term> , <term> machine translation </term> , or <term> natural language generation
tech,43-12-J05-1003,ak <term> machine translation </term> , or <term> natural language generation </term> . We present a novel method for discovering
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