A Novel Approach for Document Retrieval System with User Preferences

نویسندگان

  • Sandeep Kaur
  • Nidhi Bhatla
  • Liangcai Gao
  • Zhi Tang
  • Xiaoyan Lin
  • Yongtao Wang
چکیده

This paper proposes a method for Document Retrieval Systems. The document retrieval system finds information to given criteria by matching text record (documents) against user queries. The results generated from information retrieval system must have user preferences. Each user has its own perspectives and cultural context of each word or when the user is searching for highly specific, focussed topic. The probabilistic ranking based on graphic Bayesian statistics is associated with a Kuhn munkres algorithm for it to be really successful to group similar documents. The probabilistic ranking based Kuhn munkres algorithm uses the graphical model such as Bayesian statistics with Bayesian's theorem to find the probability of documents for more relevant results.

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تاریخ انتشار 2014