Turkish Journal of Electrical Engineering and Computer Sciences
DOI
10.3906/elk-1909-9
Abstract
Personalization is a common technique used in Web search engines to improve the effectiveness of retrieval. While personalizing some queries yields significant improvements in user experience by providing a ranking in line with the user preferences, it fails to improve or even degrades the effectiveness for less ambiguous queries. A potential personalization metric could improve search engines by selectively applying personalization. One such measure, click entropy uses the query history and the clicked documents for the query, which might be sparse for some queries. In this article, the topic entropy measure is improved by integrating the user distribution into the metric, robust to the sparsity problem. Furthermore, a topic model-based ranking for the personalization method is proposed using grouped user profiles. Experiments reveal that the proposed potential prediction method correlates with human query ambiguity judgments and the group profile-based ranking method improves the mean reciprocal rank by 8%.
Keywords
Personalized web search, topical user model, latent Dirichlet allocation
First Page
1631
Last Page
1643
Recommended Citation
MANSOUB, SAMIRA KARIMI; ERCAN, GÖNENÇ; and ÇİÇEKLİ, İLYAS
(2020)
"Selective personalization and group profiles for improved web search Personalization,"
Turkish Journal of Electrical Engineering and Computer Sciences: Vol. 28:
No.
3, Article 29.
https://doi.org/10.3906/elk-1909-9
Available at:
https://journals.tubitak.gov.tr/elektrik/vol28/iss3/29
Included in
Computer Engineering Commons, Computer Sciences Commons, Electrical and Computer Engineering Commons