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Concept coupling learning for improving concept lattice-based document retrieval

机译:概念耦合学习可改善基于概念格的文档检索

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摘要

The semantic information in any document collection is critical for query understanding in information retrieval. Existing concept lattice-based retrieval systems mainly rely on the partial order relation of formal concepts to index documents. However, the methods used by these systems often ignore the explicit semantic information between the formal concepts extracted from the collection. In this paper, a concept coupling relationship analysis model is proposed to learn and aggregate the intra- and inter-concept coupling relationships. The intra-concept coupling relationship employs the common terms of formal concepts to describe the explicit semantics of formal concepts. The inter-concept coupling relationship adopts the partial order relation of formal concepts to capture the implicit dependency of formal concepts. Based on the concept coupling relationship analysis model, we propose a concept lattice-based retrieval framework. This framework represents user queries and documents in a concept space based on fuzzy formal concept analysis, utilizes a concept lattice as a semantic index to organize documents, and ranks documents with respect to the learned concept coupling relationships. Experiments are performed on the text collections acquired from the SMART information retrieval system. Compared with classic concept lattice-based retrieval methods, our proposed method achieves at least 9%, 8% and 15% improvement in terms of average MAP, IAP@11 and P@10 respectively on all the collections.
机译:任何文档集合中的语义信息对于信息检索中的查询理解至关重要。现有的基于概念格的检索系统主要依靠形式概念到索引文档的偏序关系。但是,这些系统使用的方法通常会忽略从集合中提取的形式概念之间的显式语义信息。本文提出了一种概念耦合关系分析模型,以学习和汇总概念内和概念间的耦合关系。概念内耦合关系使用形式概念的通用术语来描述形式概念的显式语义。概念间的耦合关系采用形式概念的偏序关系来捕获形式概念的隐式依赖性。基于概念耦合关系分析模型,提出了一种基于概念格的检索框架。该框架基于模糊形式概念分析在概念空间中表示用户查询和文档,利用概念格作为语义索引来组织文档,并根据学习的概念耦合关系对文档进行排名。对从SMART信息检索系统获取的文本集进行实验。与经典概念的基于格的检索方法相比,我们提出的方法在所有集合上的平均MAP,IAP @ 11和P @ 10方面分别至少提高了9%,8%和15%。

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