Improving the Results of Google Scholar Engine through Automatic Query Expansion Mechanism and Pseudo Re-ranking using MVRA
Journal: Journal of Information and Organizational Sciences (JIOS) (Vol.42, No. 2)Publication Date: 2018-12-10
Authors : Mawloud Mosbah;
Page : 219-229
Keywords : Information Retrieval; Google engine; Query Expansion; Query Reformulation; Re-ranking; Pseudo Relevance Feedback; MVRA.;
Abstract
In this paper, we address the enhancing of Google Scholar engine, in the context of text retrieval, through two mechanisms related to the interrogation protocol of that query expansion and reformulation. The both schemes are applied with re-ranking results using a pseudo relevance feedback algorithm that we have proposed previously in the context of Content based Image Retrieval (CBIR) namely Majority Voting Re-ranking Algorithm (MVRA). The experiments conducted using ten queries reveal very promising results in terms of effectiveness.
Other Latest Articles
- Differences in Prioritization of the BSC’s Strategic Goals Using AHP and ANP Methods
- Tracking Predictive Gantt Chart for Proactive Rescheduling in Stochastic Resource Constrained Project Scheduling
- Beyond Knowledge Integration Barriers in ERP Implementations: An Institutional Approach
- Modern lightning protection of buildings and constructions. Part 2
- How much is the fire “cost” in the modern world?
Last modified: 2020-03-13 17:56:52