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Exploiting Semantic Annotations and Q-Learning for Constructing an Efficient Hierarchy/Graph Texts Organization

机译:利用语义注释和Q学习构建高效的层次结构/图形文本组织

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摘要

Tremendous growth in the number of textual documents has produced daily requirements for effective development to explore, analyze, and discover knowledge from these textual documents. Conventional text mining and managing systems mainly use the presence or absence of key words to discover and analyze useful information from textual documents. However, simple word counts and frequency distributions of term appearances do not capture the meaning behind the words, which results in limiting the ability to mine the texts. This paper proposes an efficient methodology for constructing hierarchy/graph-based texts organization and representation scheme based on semantic annotation and Q-learning. This methodology is based on semantic notions to represent the text in documents, to infer unknown dependencies and relationships among concepts in a text, to measure the relatedness between text documents, and to apply mining processes using the representation and the relatedness measure. The representation scheme reflects the existing relationships among concepts and facilitates accurate relatedness measurements that result in a better mining performance. An extensive experimental evaluation is conducted on real datasets from various domains, indicating the importance of the proposed approach.
机译:文本文档数量的巨大增长已经产生了每天的有效开发,分析,发现这些文本文档知识的需求。传统的文本挖掘和管理系统主要使用关键字的存在与否来发现和分析文本文档中的有用信息。但是,简单的单词计数和术语出现的频率分布无法捕获单词背后的含义,从而限制了挖掘文本的能力。本文提出了一种基于语义标注和Q学习的层次结构/基于图的文本组织与表示方案的有效方法。该方法基于语义概念来表示文档中的文本,以推断文本中概念之间的未知依赖关系和关系,测量文本文档之间的相关性,并使用表示和相关性度量来应用挖掘过程。表示方案反映了概念之间的现有关系,并有助于进行精确的相关性度量,从而提高了挖掘性能。对来自各个领域的真实数据集进行了广泛的实验评估,表明了所提出方法的重要性。

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