DocumentCode :
3399871
Title :
Most Influential Contextual-Features [MICF] based model for Context-Aware Recommender System
Author :
Rana, Sohel ; Jain, Abhishek ; Panchal, V.K.
Author_Institution :
Manipal Inst. of Technol., Manipal Univ., Manipal, India
fYear :
2013
fDate :
10-11 Oct. 2013
Firstpage :
1
Lastpage :
6
Abstract :
Recommender system is an information filtering system that finds its applications in various e-commerce related fields. It recommends a list of items to an end-user from a potentially overwhelming collection of choices. Since the preferences of a user is different from the likings of other users, traditional recommender systems that recommend toprated entities to all the users, may not suffice in anticipating the needs of a user. Therefore, contextualization of recommender system is required to act more efficiently and in a user-specific manner. In an effort to deliver personalized recommendations shaped by user´s contextual information, we have devised a novel methodology to incorporate contextual information into the recommender system. The proposed algorithm presents a framework for identifying the relevant contextual-variables and generating the cluster of contextual-features that depict similar rating-pattern for each class of entities. Thereafter, determining the set of Most Influential Contextual-Features that exhibit same rating-pattern as the end-user across all classes and predict the rating an end-user will give to an item, he has not rated before. Our algorithm not only renders intelligent and personalized recommendations but also alleviates cold-start, sparsity and newitem problem of traditional recommender system.
Keywords :
information filtering; recommender systems; MICF; cold-start; context-aware recommender system; contextual-features; contextual-variables; e-commerce related fields; information filtering system; most influential contextual-features based model; new-item problem; personalized recommendations; rating-pattern; user contextual information; user-specific manner; Africa; Asia; Europe; North America; Recommender systems; South America; Wildlife; Collaborative Filtering; Context-Aware Recommender System; Contextual Information; Naive-Bayes Classifier;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Emerging Trends in Communication, Control, Signal Processing & Computing Applications (C2SPCA), 2013 International Conference on
Conference_Location :
Bangalore
Print_ISBN :
978-1-4799-1082-3
Type :
conf
DOI :
10.1109/C2SPCA.2013.6749418
Filename :
6749418
Link To Document :
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