基于资源描述框架知识图的改进Concept2vec模型的查询扩展

Sarah Dahir, A. El Qadi
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引用次数: 0

摘要

网络的巨大规模和用于制定查询的术语的模糊性仍然是实现用户满意度的巨大问题。要解决这个问题,需要根据查询的上下文消除查询的歧义。提高信息检索(IR)效率的一种众所周知的技术是查询扩展(QE)。它通过添加有助于检索更多相关结果的相似术语来重新表述初始查询。本文提出了一种基于改进的Concept2vec模型的基于关联数据的量化宽松语义方法。我们工作的新颖之处在于使用来自DBpedia的查询相关链接数据作为Concept2vec跳过图模型的训练数据。我们只考虑了最重要的反馈文档,我们没有直接使用它们来生成嵌入;我们使用了他们相互关联的数据。此外,我们使用具有长值的关联数据属性,例如“dbo: abstract”,作为神经网络模型的训练数据,并且,我们从中提取有价值的QE概念。我们在美联社集合数据集上的实验表明,当跳跃图模型与DBpedia特征一起使用时,检索效率可以大大提高。此外,我们还展示了与其他方法相比的显著改进。
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Query expansion based on modified Concept2vec model using resource description framework knowledge graphs
The enormous size of the web and the vagueness of the terms used to formulate queries still pose a huge problem in achieving user satisfaction. To solve this problem, queries need to be disambiguated based on their context. One well-known technique for enhancing the effectiveness of information retrieval (IR) is query expansion (QE). It reformulates the initial query by adding similar terms that help in retrieving more relevant results. In this paper, we propose a new QE semantic approach based on the modified Concept2vec model using linked data. The novelty of our work is the use of query-dependent linked data from DBpedia as training data for the Concept2vec skip-gram model. We considered only the top feedback documents, and we did not use them directly to generate embeddings; we used their interlinked data instead. Also, we used the linked data attributes that have a long value, e.g., “dbo: abstract”, as training data for neural network models, and, we extracted from them the valuable concepts for QE. Our experiments on the Associated Press collection dataset showed that retrieval effectiveness can be much improved when a skip-gram model is used along with a DBpedia feature. Also, we demonstrated significant improvements compared to other approaches.
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来源期刊
IAES International Journal of Artificial Intelligence
IAES International Journal of Artificial Intelligence Decision Sciences-Information Systems and Management
CiteScore
3.90
自引率
0.00%
发文量
170
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