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Ranking Sentences for Keyphrase Extraction: A Relational Data Mining Approach

机译:关键短语提取的排序句子:一种关系数据挖掘方法

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Document summarization involves reducing a text document into a short set of phrases or sentences that convey the main meaning of the text. In digital libraries, summaries can be used as concise descriptions which the user can read for a rapid comprehension of the retrieved documents. Most of the existing approaches rely on the classification algorithms which tend to generate “crisp” summaries, where the phrases are considered equally relevant and no information on their degree of importance or factor of significance is provided. Motivated by this, we present a probabilistic relational data mining method to model preference relations on sentences of document images. Preference relations are then used to rank the sentences which will form the final summary. We empirically evaluate the method on real document images.
机译:文档摘要涉及将文本文档简化为传达文本主要含义的简短短语或句子集。在数字图书馆中,摘要可用作简要描述,用户可以阅读摘要以快速理解所检索的文档。现有的大多数方法都依赖于分类算法,这些算法往往会生成“酥脆”的摘要,这些短语被认为具有同等的相关性,并且未提供有关其重要程度或重要因素的信息。因此,我们提出了一种概率关系数据挖掘方法,以对文档图像句子上的偏好关系进行建模。然后使用偏好关系对句子进行排名,以形成最终的摘要。我们根据经验对真实文档图像评估该方法。

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