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공공누리This item is licensed Korea Open Government License

dc.contributor.author
Farhan, Yasir Hadi
dc.contributor.author
Noah, Shahrul Azman Mohd
dc.contributor.author
Mohd, Masnizah
dc.contributor.author
Atwan, Jaffar
dc.date.accessioned
2022-02-17T08:09:51Z
dc.date.available
2022-02-17T08:09:51Z
dc.date.issued
2021-06-30
dc.identifier.issn
2287-4577
dc.identifier.uri
https://repository.kisti.re.kr/handle/10580/16272
dc.description.abstract
Pseudo relevance feedback (PRF) is a powerful query expansion (QE) technique that prepares queries using the top k pseudorelevant documents and choosing expansion elements. Traditional PRF frameworks have robustly handled vocabulary mismatch corresponding to user queries and pertinent documents; nevertheless, expansion elements are chosen, disregarding similarity to the original query's elements. Word embedding (WE) schemes comprise techniques of significant interest concerning QE, that falls within the information retrieval domain. Deep averaging networks (DANs) defines a framework relying on average word presence passed through multiple linear layers. The complete query is understandably represented using the average vector comprising the query terms. The vector may be employed for determining expansion elements pertinent to the entire query. In this study, we suggest a DANs-based technique that augments PRF frameworks by integrating WE similarities to facilitate Arabic information retrieval. The technique is based on the fundamental that the top pseudo-relevant document set is assessed to determine candidate element distribution and select expansion terms appropriately, considering their similarity to the average vector representing the initial query elements. The Word2Vec model is selected for executing the experiments on a standard Arabic TREC 2001/2002 set. The majority of the evaluations indicate that the PRF implementation in the present study offers a significant performance improvement compared to that of the baseline PRF frameworks.
dc.format
application/pdf
dc.language.iso
eng
dc.publisher
Korea Institute of Science and Technology Information
dc.relation.ispartofseries
Journal of Information Science Theory and Practice;Volume 9 Issue 2
dc.title
Word Embeddings-Based Pseudo Relevance Feedback Using Deep Averaging Networks for Arabic Document Retrieval
dc.type
Serial
dc.identifier.doi
https://doi.org/10.1633/JISTaP.2021.9.2.1
dc.contributor.approver
KOAR, ADMIN
dc.date.dateaccepted
2022-02-17T08:09:51Z
dc.date.datesubmitted
2022-02-17T08:09:51Z
dc.subject.keyword
automatic query expansion
dc.subject.keyword
information retrievalword embedding
dc.subject.keyword
deep averaging networks
dc.subject.keyword
pseudo relevance feedback
dc.subject.keyword
Arabic document retrieval on TREC collection
Appears in Collections:
8. KISTI 간행물 > JISTaP > Vol. 9 - No. 2
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