A web recommendation system considering sequential information

作者:

Highlights:

• A novel recommendation system which considers the sequential information for generation of recommendations to users

• Uses soft clusters hence considers multiple interests of any user

• Uses rough set clustering and singular value decomposition for generation of recommendations

摘要

With the rapid growth of information technology, the current era is witnessing an exponential increase in the generation and collection of web data. Projecting the right information to the right person is becoming more difficult day by day, which in turn adds complexity to the decision making process. Recommendation systems are intelligent systems that address this issue. They are widely used in e-commerce websites to recommend products to users. Most of the popular recommendation systems consider only the content information of users and ignore sequential information. Sequential information also provides useful insights about the behavior of users. We have developed a novel system that considers sequential information present in web navigation patterns, along with content information. We also consider soft clusters during clustering, which helps in capturing the multiple interests of users. The proposed system has utilized similarity upper approximation and singular value decomposition (SVD) for the generation of recommendations for users. We tested our approach on three datasets, the MSNBC benchmark dataset, simulated dataset and CTI dataset. We compared our approach with the first order Markov model as well as random prediction model. The results validate the viability of our approach.

论文关键词:Web recommendation system,Soft clusters,Sequential information,Singular value decomposition (SVD)

论文评审过程:Received 23 March 2013, Revised 29 January 2015, Accepted 6 April 2015, Available online 14 April 2015, Version of Record 15 May 2015.

论文官网地址:https://doi.org/10.1016/j.dss.2015.04.004