tech,9-1-C92-1055,bq discrimination and robustness oriented <term> adaptive learning procedure </term> is proposed to deal with the task
other,20-1-C92-1055,bq proposed to deal with the task of <term> syntactic ambiguity resolution </term> . Owing to the problem of <term> insufficient
other,5-2-C92-1055,bq resolution </term> . Owing to the problem of <term> insufficient training data </term> and <term> approximation error </term>
other,9-2-C92-1055,bq insufficient training data </term> and <term> approximation error </term> introduced by the <term> language model
model,14-2-C92-1055,bq approximation error </term> introduced by the <term> language model </term> , traditional <term> statistical approaches
tech,18-2-C92-1055,bq language model </term> , traditional <term> statistical approaches </term> , which resolve <term> ambiguities </term>
other,23-2-C92-1055,bq statistical approaches </term> , which resolve <term> ambiguities </term> by indirectly and implicitly using
tech,29-2-C92-1055,bq by indirectly and implicitly using <term> maximum likelihood method </term> , fail to achieve high <term> performance
measure(ment),37-2-C92-1055,bq method </term> , fail to achieve high <term> performance </term> in real applications . The proposed
measure(ment),13-3-C92-1055,bq adjusting the parameters to maximize the <term> accuracy rate </term> directly . To make the proposed algorithm
lr,12-4-C92-1055,bq the possible variations between the <term> training corpus </term> and the real tasks are also taken
other,26-4-C92-1055,bq into consideration by enlarging the <term> separation margin </term> between the correct candidate and
measure(ment),1-6-C92-1055,bq has been observed in the test . The <term> accuracy rate </term> of <term> syntactic disambiguation </term>
tech,4-6-C92-1055,bq . The <term> accuracy rate </term> of <term> syntactic disambiguation </term> is raised from 46.0 % to 60.62 %
hide detail