User Interest Prediction Model for Hybrid Tag Recommender Automation Systems

Authors

  • Fahad Iqbal T. Research Scholar, Department of Innovative Informatics, Institute of Computer Science and Engineering, Saveetha School of Engineering, Chennai, Saveetha Institute of Medical and Technical Services Author
  • Gnanajeyaraman R. Asso. Prof., CSE, SBM College of Engg & Tech, Dindigul Author

DOI:

https://doi.org/10.61841/0we67v80

Keywords:

Web Search, Web Mining, Web Search State Graph, User Interest Prediction, Hybrid Tag Recommender

Abstract

The problem of web search has been discussed in a variety of situations, and there are many approaches recommended by different researchers earlier. Personalized recommender systems aim to help users access and retrieve relevant information or items from large collections by automatically finding and suggesting products or services of likely interest based on observed evidence of the users preferences. For many reasons, user preferences are difficult to guess, and therefore recommender systems have a considerable variance in their success ratio in estimating the users tastes and interests. In such a scenario, self-predicting the chances that a recommendation is accurate before actually submitting it to a user becomes an interesting capability from many perspectives. Performance prediction has been studied in the context of search engines in the information retrieval field, but there is little if any prior research of this problem in the recommendation domain. Based on the computed state support measure, the method computes the interest probability and finally generates recommendations to the prediction model. The proposed method increases the efficiency of the web search and reduces the overall search time complexity. 

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Published

31.07.2020

How to Cite

T. , F. I., & R. , G. (2020). User Interest Prediction Model for Hybrid Tag Recommender Automation Systems. International Journal of Psychosocial Rehabilitation, 24(5), 4175-4185. https://doi.org/10.61841/0we67v80