Mingling the contextual information in improved multidimensional recommendation system
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Abstract
Recommender systems utilize the times of yore experiences and preferences of the target customers as a basis
to proffer personalized recommendations for them as well as resolve the information overloading hitch. Personalized
recommendation methods are primarily classified into content-based recommendation approach and collaborative
filtering recommendation approach. Both recommendation approaches have their own advantages, drawbacks and
complementarities. Because conventional recommendation techniques don’t consider the contextual information, the
real factor why a customer likes a specific product is unable to be understood. Therefore, in reality, it often causes a
decrease in the accuracy of the recommendation results and also persuades the recommendation quality. In this paper,
we propose the integrated contextual information as the foundation concept of multidimensional recommendation
model and use the Online Analytical Processing (OLAP) ability of data warehousing to solve the contradicting
tribulations among hierarchy ratings. This work hopes that by establishing additional user profiles and
multidimensional analysis to find the key factors affecting user perceptions, it would increase the recommendation
quality.
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Husain, М. Mingling the contextual information in improved multidimensional recommendation system [Text] / Mohammad Husain // Computing = Комп’ютинг. - 2011. - Vol. 10, is. 3. - P. 295-302.