36,99 €
inkl. MwSt.
Versandkostenfrei*
Versandfertig in 6-10 Tagen
  • Broschiertes Buch

Web search engines are critical for overcoming information overload. A major deficiency of existing retrieval systems is that they generally lack user modeling and are not adaptive to individual users, resulting in inherently non-optimal retrieval performance. For example, a Programmer and Geologist may use the same word "python" to search for different information, but the current search systems would return the same results. That is how it is essential to model a user profile that is useful to re-rank result based on user's current interest.The proposed framework presents a novel approaches…mehr

Produktbeschreibung
Web search engines are critical for overcoming information overload. A major deficiency of existing retrieval systems is that they generally lack user modeling and are not adaptive to individual users, resulting in inherently non-optimal retrieval performance. For example, a Programmer and Geologist may use the same word "python" to search for different information, but the current search systems would return the same results. That is how it is essential to model a user profile that is useful to re-rank result based on user's current interest.The proposed framework presents a novel approaches to personalize web search through modeling user profile and reformulate user's query by analyzing his/her previous search history, click, long term interest as well as short term interest.
Autorenporträt
Kamlesh Makvana is working as asst.professor at Department of Information Technology, Charusat university change, India. He completed his B.E., in Computer Engineering at GEC Rajkot in 2010 and M.Tech (Information Technology) at Charusat University Changa in 2014.His areas of interest include Semantic web, web mining, and information retrieval.