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Author Kirmemis, Oznur ♦ Birturk, Aysenur
Source CiteSeerX
Content type Text
File Format PDF
Subject Domain (in DDC) Computer science, information & general works ♦ Data processing & computer science
Subject Keyword User Model ♦ Optimization Approach ♦ Movie Recommendation ♦ Content-based User Model Generation ♦ Movie Domain ♦ Movie Recommendation Algorithm ♦ Information Search ♦ Important Feature ♦ Care Flag ♦ Collaborative-based User Model ♦ Powerful Approach ♦ Decision-support Metric ♦ Content Information ♦ Target User ♦ Recommendation System ♦ Unknown Preference ♦ Building Content
Abstract Personalization has become a powerful approach for constructing more precise and easy to use information search and recommendation systems. The quality of the personalization is heavily dependent on the accuracy of the user models created by the system and it is very important to incorporate content information of the working domain in order to enrich these models. This paper proposes a content based movie recommendation algorithm to make recommendations for the target user through building content based user models from collaborative-based user models and characteristics of the movie domain. Constructed user models are fine-tuned through “highly liked”, “highly not liked”, and “don’t care ” flags. The user models are presented to the users in terms of the most important features and dimensions in their profile. This makes explicit the users ’ implicit and unknown preferences of the movie domain. The system is evaluated and the results are presented using decision-support metrics.
Educational Role Student ♦ Teacher
Age Range above 22 year
Educational Use Research
Education Level UG and PG ♦ Career/Technical Study
Learning Resource Type Article