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Recommendation System Using User Interest and Social Circle
Aniket Pote*, Swapnil Sutar, Priyanka Sonawane, Fatima Inamdar

Published in: International Journal of Scientific Review and Research in Engineering and Technology
Volume- 1, Issue-4, pp.41-49, Jun 2016
DPI :-> 16.10069.IJSRRET.2016.V1I4.4149.1314



Abstract
Social networking has become an important part of our life. Every day, new users are becoming a part of this social experience. It is becoming an important and inseparable part of our daily routine and life. The users of these social networking sites are keen to share their point of view, experiences and views. Also, users of these sites are very keen to find users of similar interest for their current information requirement. This sharing of experiences creates a huge amount of data to be created and is made available. So, finding important and relevant information becomes difficult for the user for required topic or query. The currently existing systems, recommend individuals or users based on information given by the user during registration for profile. Drawback with these systems is that they fail to consider the user’s current requirements. To overcome this drawback of these existing systems, we propose a new system which fetches user’s current interest and this is done by using user’s current web posts by using an effective web crawler. Features such as Noun, Top Words and Numeric Words are extracted for this information. Later, fuzzy logic generates opinion summery. The fuzzy logic's input is extracted features acting as crisp values. This opinion summery is used for weight based recommendation and this weight based recommendation is providing best results than other existing systems

Key-Words / Index Term
Crawling, preprocessing, feature extraction, fuzzy logic, recommendation

How to cite this article
Aniket Pote*, Swapnil Sutar, Priyanka Sonawane, Fatima Inamdar , “Recommendation System Using User Interest and Social Circle”, International Journal of Scientific Review and Research in Engineering and Technology, 1, Issue-4, pp.41-49, Jun 2016. DPI:16.10069.IJSRRET.V1.I4.1314