TY - JOUR
T1 - Hybrid recommendation algorithm based on latent factor model and personal rank
AU - Hu, Jingjing
AU - Liu, Linzhu
AU - Zhang, Changyou
AU - He, Jialing
AU - Hu, Changzhen
N1 - Publisher Copyright:
© 2018 Taiwan Academic Network Management Committee. All rights reserved.
PY - 2018
Y1 - 2018
N2 - To promote the development of future social networks, an efficient recommendation algorithm is needed. Due to high-dimensional structures and missing rating information of the user-item matrix caused by sparse data, the direct use of a single recommendation algorithm is inefficient. In order to improve the accuracy of personalized recommendations, we propose an improved hybrid recommendation algorithm based on the latent factor model (LFM) and the PersonalRank algorithm, which adopts a cascade mixing approach with features expanding. First, it fills in a sparse matrix using LFM for the users who did not evaluate for the items. Next, it sets up a graph model and uses the PersonalRank algorithm in the filling matrix. Finally, it computes PR values of each user for items and implements sorting. The efficiency of the hybrid algorithm was verified on the MovieLens dataset. Compared with the PersonalRank algorithm, it can improve the accuracy rate and the recall rate of top-N recommendations.
AB - To promote the development of future social networks, an efficient recommendation algorithm is needed. Due to high-dimensional structures and missing rating information of the user-item matrix caused by sparse data, the direct use of a single recommendation algorithm is inefficient. In order to improve the accuracy of personalized recommendations, we propose an improved hybrid recommendation algorithm based on the latent factor model (LFM) and the PersonalRank algorithm, which adopts a cascade mixing approach with features expanding. First, it fills in a sparse matrix using LFM for the users who did not evaluate for the items. Next, it sets up a graph model and uses the PersonalRank algorithm in the filling matrix. Finally, it computes PR values of each user for items and implements sorting. The efficiency of the hybrid algorithm was verified on the MovieLens dataset. Compared with the PersonalRank algorithm, it can improve the accuracy rate and the recall rate of top-N recommendations.
KW - Hybrid recommendation algorithm
KW - Latent factor model
KW - PersonalRank
UR - http://www.scopus.com/inward/record.url?scp=85048883986&partnerID=8YFLogxK
U2 - 10.3966/160792642018051903027
DO - 10.3966/160792642018051903027
M3 - Article
AN - SCOPUS:85048883986
SN - 1607-9264
VL - 19
SP - 919
EP - 926
JO - Journal of Internet Technology
JF - Journal of Internet Technology
IS - 3
ER -