Web page prediction from metasearch results
Abstract
Purpose
This study aims to present a new web page recommendation system that can help users to reduce navigational time on the internet.
Design/methodology/approach
The proposed design is based on the primacy effect of browsing behavior, that users prefer top ranking items in search results. This approach is intuitive and requires no training data at all.
Findings
A user study showed that users are more satisfied with the proposed search methods than with general search engines using hot keywords. Moreover, two performance measures confirmed that the proposed search methods out‐perform other metasearch and search engines.
Research limitations/implications
The research has limitations and future work is planned along several directions. First, the search methods implemented are primarily based on the keyword match between the contents of web pages and the user query items. Using the semantic web to recommend concepts and items relevant to the user query might be very helpful in finding the exact contents that users want, particularly when the users do not have enough knowledge about the domains in which they are searching. Second, offering a mechanism that groups search results to improve the way search results are segmented and displayed also assists users to locate the contents they need. Finally, more user feedback is needed to fine‐tune the search parameters including α and β to improve the performance.
Practical implications
The proposed model can be used to improve the search performance of any search engine.
Originality/value
First, compared with the democratic voting procedure used by metasearch engines, search engine vector voting (SVV) enables a specific combination of search parameters, denoted as α and β, to be applied to a voted search engine, so that users can either narrow or expand their search results to meet their search preferences. Second, unlike page quality analysis, the hyperlink prediction (HLP) determines qualified pages by simply measuring their user behavior function (UBF) values, and thus takes less computing power. Finally, the advantages of HLP over statistical analysis are that it does not need training data, and it can target both multi‐site and site‐specific analysis.
Keywords
Citation
Chen, L. and Luh, C. (2005), "Web page prediction from metasearch results", Internet Research, Vol. 15 No. 4, pp. 421-446. https://doi.org/10.1108/10662240510615182
Publisher
:Emerald Group Publishing Limited
Copyright © 2005, Emerald Group Publishing Limited