A Hybrid Semantic Statistical Query Expansion for Arabic Information Retrieval Systems

A. Nehar, Slimane Bellaouar, Djamila Mahfoud, Fatima Zohra Daoudi
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Abstract

Query-document vocabulary mismatch, the lack of query expressiveness for user needs and the phenomenon of short queries are the main issues associated with information retrieval systems. Query Expansion (QE) is one of the well-known alternative for overcoming these problems. It mainly involves finding synonyms or related words for the query terms. There are several approaches in the query expansion field such as statistical and semantic approaches; they focus on expanding the individual query terms rather than the entire query during the expansion process. An other category of approaches deals with the whole query by using a neural approach based on Pseudo Relevance feedback (PRF) documents. In this work, we carried out an ablation study to measure the impact of the classical and semantic (word embedding, order, context) based query expansion on the retrieval performance. The experiments conducted on the Arabic EveTAR dataset reveal that our hybrid proposed approach combining classical (PRF) and transformer (AraBERT) is competitive with the state-of-the-art methods. In fact, the obtained result in terms of the Mean Average Precision (MAP) is up to 0.72.
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面向阿拉伯语信息检索系统的混合语义统计查询扩展
查询文档词汇不匹配、查询缺乏对用户需求的表达能力以及短查询现象是与信息检索系统相关的主要问题。查询扩展(Query Expansion, QE)是克服这些问题的一种众所周知的替代方法。它主要涉及为查询术语查找同义词或相关单词。在查询扩展领域有几种方法,如统计方法和语义方法;它们侧重于在扩展过程中扩展单个查询项,而不是整个查询。另一类方法通过使用基于伪相关反馈(PRF)文档的神经方法处理整个查询。在这项工作中,我们进行了一项消融研究,以衡量基于经典和语义(词嵌入、顺序、上下文)的查询扩展对检索性能的影响。在阿拉伯EveTAR数据集上进行的实验表明,我们提出的结合经典(PRF)和变压器(AraBERT)的混合方法与最先进的方法相比具有竞争力。实际上,所得结果的平均精度(MAP)可达0.72。
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