IEEE Access (Jan 2018)

Relevant Feedback Based Accurate and Intelligent Retrieval on Capturing User Intention for Personalized Websites

  • Yayuan Tang,
  • Hao Wang,
  • Kehua Guo,
  • Yizhe Xiao,
  • Tao Chi

DOI
https://doi.org/10.1109/ACCESS.2018.2828081
Journal volume & issue
Vol. 6
pp. 24239 – 24248

Abstract

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With the rapid growth of networking, cyber-physical-social systems (CPSSs) provide vast amounts of information. Aimed at the huge and complex data provided by networking, obtaining valuable information to meet precise search needs when capturing user intention has become a major challenge, especially in personalized websites. General search engines face difficulties in addressing the challenges brought by this exploding amount of information. In this paper, we use real-time location and relevant feedback technology to design and implement an efficient, configurable, and intelligent retrieval framework for personalized websites in CPSSs. To improve the retrieval results, this paper also proposes a strategy of implicit relevant feedback based on click-through data analysis, which can obtain the relationship between the user query conditions and retrieval results. Finally, this paper designs a personalized PageRank algorithm including modified parameters to improve the ranking quality of the retrieval results using the relevant feedback from other users in the interest group. Experiments illustrate that the proposed accurate and intelligent retrieval framework improves the user experience.

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