Missing Item Prediction and Its Recommendation Based on Users Approach in Ecommerce


Article PDF :

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Article type :

Original Article

Author :

Himanshu Deulkar | Rajeshri R. Shelke

Volume :

1

Issue :

4

Abstract :

The Internet is one of the fastest growing areas of intelligence gathering. Due to the tremendous amount of data on internet, web data mining has become very necessary. Predicting the missing items form data set is indefinite area of research in Web Data Mining. Current approaches use association rule mining techniques which are applied to only small item sets. Numbers of mechanisms were intended for frequent item sets but less attention has been paid that take the advantage of these frequent item sets for prediction purpose. In order to reduce the rule mining cost for large dataset & to provide online prediction efficiently, the proposed approach use novel method for predicting the missing items. The proposed approach extends advantages of prediction at a higher level of abstraction and reduced rule generation complexity by finding out a technique that will work on dissimilar approach. by Himanshu Deulkar | Rajeshri R. Shelke"Missing Item Prediction and Its Recommendation Based on Users Approach in Ecommerce" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-1 | Issue-4 , June 2017, URL: http://www.ijtsrd.com/papers/ijtsrd99.pdf Paper URL: http://www.ijtsrd.com/engineering/computer-engineering/99/missing-item-prediction-and-its-recommendation-based-on-users-approach-in-ecommerce/himanshu-deulkar

Keyword :

Predicting the missing items in ecommerce, Missing Item Recommendation, Item recommendation in online business
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