The Efficacy of Google's suggested keywords and phrases in Query Expansion on postgraduates' View about retrieval relevance

Document Type : مقالات پژوهشی

Authors

1 Faculty member of Bushehr University of Medical Science, Bushehr Iran

2 Professor, Dept. of Library and Information Science, Ferdowsi University of Mashhad, Iran

3 Professor, Department of Library and Information Science, Ferdowsi University of Mashhad, Iran

Abstract

Abstract

Purpose: The goal of information systems is to retrieve relevant information fulfilling users’ needs. According to this, search engines have offered a new capability as “suggested keywords”. This is an essential problem that how much these suggested keywords have compatibility with users’ needs. The present research aims to investigate the efficacy of Google's suggested keywords in query expansion and retrieval relevance from users’ view.

Methodology: Through a survey method data were collected from 60 postgraduate students in Humanities/ social sciences and Basic/ Engineering Sciences at Ferdowsi University of Mashhad, Iran. These data were collected by using a researcher-made questionnaire. Non-probability sampling –especially purposive sampling- was used as the sampling method. Also, individual interviews were established with each of the 60 students.

Findings: Findings show that there is a significant difference between the relevance of retrieved results related to primary keyword search and results retrieved through query expansion (suggested keywords). Also there is no significant difference between retrieved results in the two fields of sciences. Finally, the paper suggests some solutions to improve retrieved results related to suggested keywords.

Keywords


 
Baeza-Yates R. (2004). Query Recommendation Using Query Logs in Search Engines. 588--596.
Billerbeck, B., & Zobel, J. (2004). Questioning Query Expansion: An Examination of Behaviour and Parameters. New oreland, USA
Casasola, E., & Gauch, S. (1997). Intelligent Information Agents for the World Wide Web: Information and Telecommunication Technology Center, the University of Kansas.
Chowdhury, G., Soboroff,  S. (2002). Automatic Evaluation of World Wide Web Search Services.  Retieved from:
Ellis, D., Ford, N., Furner, J. (1998). In Search of the Unknown User: Indexing and Hypertext and the World Wide Web. Journal of Documentation 54(1), 28–47.
Fattahi, R., Wilson, CS, Cole, F (2008). An Alternative Approach to Natural Language Query Expansion in Search Engines Text Analysis of Non-topical Terms in Web Documents. Information Processing and Management, 44, 1503-1516.
Ferreira, A., Atkinson, J. (2007). Intelligent Search Engines. Retrieved from:
Giles, L. S. a. C. L. (1998). Context and page Analysis for Improved Web Search. IEEE Internet Computing 2(4).
Jansen, B., young Rieh, S. (2010). The Seventeen Theoretical Constructs of Information Searching and Information Retrieval. Journal of the American Society for Information Science and Technology, 61(8).
Lawrence, S., & Giles, C. L. (1998). Context and page Analysis for Improved Web Search. Internet Computing, IEEE, 2(4), 38-46.
Natsev, A., Haubold, A., Tesic, J., Xie, L., & Yan, R. (2007). Semantic Concept-Based Query Expansion and Re-Ranking for Multimedia Retrieval.
Pokorny, J. (2004). Web Searching and Information Retrieval. IEEE Computer Software, 6(4), . 43–48
Qiu, Y. &. H. P. Frei. (1993). Concept Based Query Expansion. Retrieved from http://doi.acm.org/10.1145/160688.160713
Schatz, B, P. A. Cochrane, & H Chen (1996). Interactive Term Suggestion for Users of Digital Libraries: Using Subject Thesauri and Co-Occurrence lists for Information Retrieval. Paper presented at the 1st ACM International Conference on Digital Libraries.
Song, Y., & L, He. (2010). Optimal rare query suggestion with implicit user feedback.
Spink, A., H. C. Ozmutlu, and S. Ozmutlu (2002). Multitasking Information Seeking and Searching processes. Journal of the American society for information science and technology 53(8)): 639-652.
Spink, et. al. (1998). From Highly Relevant to not Relevant: Examining Different Regions of Relevance. In Information Processing and Management. Retrieved from: http://www.informatik.uni-trier.de/ley/db/indices/a-tree/s/Spink:Amanda.html
Sugiyama, K., Hatano, K. and Yoshikawa, M. (2004). Adaptive Web Search Based on User Profile Constructed without any Effort from User. Paper presented at the In Proceedings of WWW ‘04.
Wang, J., Davison, B. D. (2008). Explorations in Tag Suggestion and Query Expansion. Paper presented at the SSM ’08: Proceeding of the 2008 ACM Workshop on Search in Social Media, pages 43–50, New York, NY, USA, ACM.
Widyantoro, D. H., Yen, J. (2001). A Fuzzy Ontology-based Abstract Search Engine and its User Studies. Paper presented at the Proceedings of the 10th IEEE International Conference on.
CAPTCHA Image