TY - JOUR
T1 - N-screen aware multicriteria hybrid recommender system using weight based subspace clustering
AU - Ullah, Farman
AU - Sarwar, Ghulam
AU - Lee, Sungchang
N1 - Publisher Copyright:
© 2014 Farman Ullah et al.
PY - 2014
Y1 - 2014
N2 - This paper presents a recommender system for N-screen services in which users have multiple devices with different capabilities. In N-screen services, a user can use various devices in different locations and time and can change a device while the service is running. N-screen aware recommendation seeks to improve the user experience with recommended content by considering the user N-screen device attributes such as screen resolution, media codec, remaining battery time, and access network and the user temporal usage pattern information that are not considered in existing recommender systems. For N-screen aware recommendation support, this work introduces a user device profile collaboration agent, manager, and N-screen control server to acquire and manage the user N-screen devices profile. Furthermore, a multicriteria hybrid framework is suggested that incorporates the N-screen devices information with user preferences and demographics. In addition, we propose an individual feature and subspace weight based clustering (IFSWC) to assign different weights to each subspace and each feature within a subspace in the hybrid framework. The proposed system improves the accuracy, precision, scalability, sparsity, and cold start issues. The simulation results demonstrate the effectiveness and prove the aforementioned statements. Erratum to "N-Screen Aware Multicriteria Hybrid Recommender System Using Weight Based Subspace Clustering" dx.doi.org/10.1155/2015/261862
AB - This paper presents a recommender system for N-screen services in which users have multiple devices with different capabilities. In N-screen services, a user can use various devices in different locations and time and can change a device while the service is running. N-screen aware recommendation seeks to improve the user experience with recommended content by considering the user N-screen device attributes such as screen resolution, media codec, remaining battery time, and access network and the user temporal usage pattern information that are not considered in existing recommender systems. For N-screen aware recommendation support, this work introduces a user device profile collaboration agent, manager, and N-screen control server to acquire and manage the user N-screen devices profile. Furthermore, a multicriteria hybrid framework is suggested that incorporates the N-screen devices information with user preferences and demographics. In addition, we propose an individual feature and subspace weight based clustering (IFSWC) to assign different weights to each subspace and each feature within a subspace in the hybrid framework. The proposed system improves the accuracy, precision, scalability, sparsity, and cold start issues. The simulation results demonstrate the effectiveness and prove the aforementioned statements. Erratum to "N-Screen Aware Multicriteria Hybrid Recommender System Using Weight Based Subspace Clustering" dx.doi.org/10.1155/2015/261862
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U2 - 10.1155/2014/679849
DO - 10.1155/2014/679849
M3 - Article
C2 - 25152921
AN - SCOPUS:84924364176
SN - 2356-6140
VL - 2014
JO - Scientific World Journal
JF - Scientific World Journal
M1 - 679849
ER -