A Complete Survey on Web Document Ranking

نویسندگان

  • Shashank Gugnani
  • Tushar Bihany
  • Rajendra Kumar Roul
  • Narayan L Bhamidipati
  • Ali Mohammad Zareh Bidoki
  • Pedram Ghodsnia
  • Nasser Yazdani
  • Vali Derhami
  • Elahe Khodadadian
  • Mohammad Ghasemzadeh
  • Yajun Du
  • Hua Jiang
  • Yong-Xing Ge
  • Dan Zuo
  • Chen Chen
  • Zhang Hui
  • Sun Rong-Shuang
  • Zhu Yan
  • Ahmad Kayed
  • Eyas El-Qawasmeh
چکیده

Today, web plays a critical role in human life and also simplifies the same to a great extent. However, due to the towering increase in the number of web pages, the challenge of providing quality and relevant information to the users also needs to be addressed. Thus, search engines need to implement such algorithms which spans the pages as per user's interest and satisfaction and rank them accordingly. The concept of web mining tremendously assists

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تاریخ انتشار 2014