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Ranking Keyphrases from Semantic and Syntactic Features of Textual Terms

机译:从文本术语的语义和句法特征对关键词进行排名

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Two important lines of research in key phrase extraction from text are methods that use machine learning to discover rules based on statistics of terms, and knowledge-intensive methods that seek to understand the semantics of the text with the help of conceptual bases like Wikipedia. Our argument is that the task of key phrase extraction for different domains requires defining ranking functions that take into account the advantages and shortcomings of each approach to the specific problem. To determine the best ranking function, arrangements of weights are generated, which in turn weight each of the attributes used in both the statistic and semantic functions. The arrangement of weights that presents better average performance sets the weights of the attributes of the ranking function. We show comparative tests conducted with current approaches that use only syntactic or semantic features with a hybrid ranking approach. The later outperformed the state of the art.
机译:从文本中提取关键短语的研究的两个重要方面是使用机器学习根据术语统计信息发现规则的方法,以及在诸如Wikipedia之类的概念基础的帮助下寻求理解文本语义的知识密集型方法。我们的论点是,针对不同领域的关键短语提取任务需要定义排名函数,其中要考虑到针对特定问题的每种方法的优缺点。为了确定最佳的排序功能,将生成权重的安排,这些权重依次对统计和语义功能中使用的每个属性进行加权。表现出更好的平均性能的权重设置设置了排名函数的属性的权重。我们显示了使用仅使用句法或语义特征以及混合排名方法的当前方法进行的比较测试。后者的表现超越了现有技术。

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