集成多个注释层,用于统计信息蒸馏

Michael Levit, Dilek Z. Hakkani-Tür, Gökhan Tür, D. Gillick
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引用次数: 9

摘要

我们提出了一种用于信息蒸馏的句子提取算法,对于给定的模板查询,必须从大量音频和文本文档源中提取相关段落。对于相关文档的每个句子(假设从上游阶段已知),我们使用统计分类方法来估计其与查询的相关性程度,其中考虑了相关性的两个方面:查询的模板(类型)及其槽(名称,组织,主题,事件等的自由文本描述,围绕模板中心)。该方法的独特之处在于选择用于分类的特征。我们从图表、各种注释级别的元素汇编(如单词转录、句法和语义解析以及信息提取注释)中提取特征。在我们的实验中,我们表明,就F-measure而言,这种综合方法比纯词汇基线的表现高出30%。我们还研究了该算法在噪声条件下的行为,通过比较其在ASR输出和相应的手动转录上的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating several annotation layers for statistical information distillation
We present a sentence extraction algorithm for Information Distillation, a task where for a given templated query, relevant passages must be extracted from massive audio and textual document sources. For each sentence of the relevant documents (that are assumed to be known from the upstream stages) we employ statistical classification methods to estimate the extent of its relevance to the query, whereby two aspects of relevance are taken into account: the template (type) of the query and its slots (free-text descriptions of names, organizations, topic, events and so on, around which templates are centered). The idiosyncrasy of the presented method is in the choice of features used for classification. We extract our features from charts, compilations of elements from various annotation levels, such as word transcriptions, syntactic and semantic parses, and Information Extraction annotations. In our experiments we show that this integrated approach outperforms a purely lexical baseline by as much as 30% relative in terms of F-measure. We also investigate the algorithm's behavior under noisy conditions, by comparing its performance on ASR output and on corresponding manual transcriptions.
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