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Survey on Detecting Users Behavior Applying Country- Wise Local Search

Abhishek Shukla, Gajendra Singh Dhakad


In this paper we have discussed about the data mining, web mining and the recommendation network. Web mining is explained with the classification of web mining. Recommendater system is explained properly with the explanation of whole procedure of the recommendater system. Various sequential mining pattern algorithms have been explained with various pros and cons. Also, all the work that has been done by them till date is explained fully with proper explanation.

Cite this Article
Abhishek Shukla, Gajendra Singh Dhakad. Survey on Detecting Users
Behavior Applying Country-Wise Local Search. Journal of Advanced Database
Management & Systems. 2015; 2(3):11–19p.


Sequential pattern mining, web mining, recommendation system

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