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Author Posoldova, A. ♦ Oravec, M. ♦ Rozinaj, G.
Source IEEE Xplore Digital Library
Content type Text
Publisher Institute of Electrical and Electronics Engineers, Inc. (IEEE)
File Format PDF
Copyright Year ©2013
Language English
Subject Domain (in DDC) Natural sciences & mathematics ♦ Physics ♦ Electricity & electronics ♦ Technology ♦ Engineering & allied operations ♦ Applied physics
Subject Keyword Fuzzy logic ♦ Training ♦ Interpolation ♦ TV ♦ Preprocessing ♦ Classification ♦ Recommendation System ♦ Resource description framework ♦ Data mining ♦ Smart Television
Abstract This paper presents a general approach for personalized recommendation system for next generation of smart television. Hence the TV provides a hybrid broadband and broadcast transmission both can collect information. Aim is to combine television with internet content in order to provide interactive and personalized recommendation. This improves user's watching experience. Since these two sources have a different format, data integration is needed. Additionally, the data have to be preprocessed in order to remove so-called “global effects” and improve further classification. Classifier is based on k-nearest neighbors (kNN) improved approach, designed for the Neflix price. It was described for an on-demand-video, where no time consideration is needed. On the other hand, we include time as a factor worth considering as it is typical for TV program schedule. Final recommendation includes also Fuzzy logic based training sequence selection and final weight correction.
Description Author affiliation: Fac. of Electr. Eng. & Inf. Technol., Slovak Univ. of Technol., Bratislava, Slovakia (Posoldova, A.; Oravec, M.; Rozinaj, G.)
ISBN 9789537044145
ISSN 13342630
Educational Role Student ♦ Teacher
Age Range above 22 year
Educational Use Research ♦ Reading
Education Level UG and PG
Learning Resource Type Article
Publisher Date 2013-09-25
Publisher Place Croatia
Rights Holder Croatian Society Electronics in Marine - ELMAR
e-ISBN 9789537044145
Size (in Bytes) 216.05 kB
Page Count 4
Starting Page 215
Ending Page 218


Source: IEEE Xplore Digital Library