TY - GEN
T1 - Robust sparse tensor decomposition by probabilistic latent semantic analysis
AU - Pang, Yanwei
AU - Ma, Zhao
AU - Pan, Jing
AU - Yuan, Yuan
PY - 2011
Y1 - 2011
N2 - Movie recommendation system is becoming more and more popular in recent years. As a result, it is becoming increasingly important to develop machine learning algorithm on partially-observed matrix to predict users' preferences on missing data. Motivated by the user ratings prediction problem, we propose a novel robust tensor probabilistic latent semantic analysis (RT-pLSA) algorithm that not only takes time variable into account, but also uses the periodic property of data in time attribute. Different from the previous algorithms of predicting missing values on two-dimensional sparse matrix, we formulize the prediction problem as a probabilistic tensor factorization problem with periodicity constraint on time coordinate. Furthermore, we apply the Tsallis divergence error measure in the context of RT-pLSA tensor decomposition that is able to robustly predict the latent variable in the presence of noise. Our experimental results on two benchmark movie rating dataset: Netflix and Movielens, show a good predictive accuracy of the model.
AB - Movie recommendation system is becoming more and more popular in recent years. As a result, it is becoming increasingly important to develop machine learning algorithm on partially-observed matrix to predict users' preferences on missing data. Motivated by the user ratings prediction problem, we propose a novel robust tensor probabilistic latent semantic analysis (RT-pLSA) algorithm that not only takes time variable into account, but also uses the periodic property of data in time attribute. Different from the previous algorithms of predicting missing values on two-dimensional sparse matrix, we formulize the prediction problem as a probabilistic tensor factorization problem with periodicity constraint on time coordinate. Furthermore, we apply the Tsallis divergence error measure in the context of RT-pLSA tensor decomposition that is able to robustly predict the latent variable in the presence of noise. Our experimental results on two benchmark movie rating dataset: Netflix and Movielens, show a good predictive accuracy of the model.
KW - Movie recommendation
KW - Sparse representation
KW - Tensor analysis
KW - Topic model
UR - http://www.scopus.com/inward/record.url?scp=80052983138&partnerID=8YFLogxK
U2 - 10.1109/ICIG.2011.98
DO - 10.1109/ICIG.2011.98
M3 - 会议稿件
AN - SCOPUS:80052983138
SN - 9780769545417
T3 - Proceedings - 6th International Conference on Image and Graphics, ICIG 2011
SP - 893
EP - 896
BT - Proceedings - 6th International Conference on Image and Graphics, ICIG 2011
T2 - 6th International Conference on Image and Graphics, ICIG 2011
Y2 - 12 August 2011 through 15 August 2011
ER -