Author:
ALMarwi Hiba,Ghurab Mossa,Al-Baltah Ibrahim
Abstract
AbstractIn fact, most of information retrieval systems retrieve documents based on keywords matching, which are certainly fail at retrieving documents that have similar meaning with syntactical different keywords (form). One of the well-known approaches to overcome this limitation is query expansion (QE). There are several approaches in query expansion field such as statistical approach. This approach depends on term frequency to generate expansion features; nevertheless it does not consider meaning or term dependency. In addition, there are other approaches such as semantic approach which depends on a knowledge base that has a limited number of terms and relations. In this paper, researchers propose a hybrid approach for query expansion which utilizes both statistical and semantic approach. To select the optimal terms for query expansion, researchers propose an effective weighting method based on particle swarm optimization (PSO). A system prototype was implemented as a proof-of-concept, and its accuracy was evaluated. The experimental was carried out based on real dataset. The experimental results confirm that the proposed approach enhances the accuracy of query expansion.
Publisher
Springer Science and Business Media LLC
Subject
Information Systems and Management,Computer Networks and Communications,Hardware and Architecture,Information Systems
Reference43 articles.
1. Atwan J, Mohd M, Rashaideh H, Kanaan G. Semantically enhanced pseudo relevance feedback for arabic information retrieval. J Inf Sci. 2016;42(2):246–60.
2. Sadowski C, Stolee KT, Elbaum S. How developers search for code: a case study. In: Proceedings of the 2015 10th joint meeting on foundations of software engineering. 2015. p. 191–201.
3. Jung Y, Park H, Du D-Z. An effective term-weighting scheme for information retrieval. Computer Science Technical Report TR008. Department of Computer Science, University of Minnesota, Minneapolis, Minnesota. 2000. p. 1–15.
4. Lau T, Horvitz E. Patterns of search: analyzing and modeling web query refinement. In: UM99 user modeling. Springer; 1999. p. 119–28.
5. Carpineto C, Romano G. A survey of automatic query expansion in information retrieval. ACM Comput Surv. 2012;44(1):1–50.
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