National Program on Key Basic Development Research Project of China (No.2013CB329606);National Natural Science Foundation of China (No.61772098);Basic Science and Frontier Research Project of Chongqing Municipality (No.cstc2017jcyjAX0099)
XIAO Yun-peng, LIU Yan-chi, LIU Hong, et al. A Recommendation Model Based on Dynamic Role Identification and Tensor Decomposition[J]. Acta Electronica Sinica, 2018, 46(3): 569-574.
DOI:
XIAO Yun-peng, LIU Yan-chi, LIU Hong, et al. A Recommendation Model Based on Dynamic Role Identification and Tensor Decomposition[J]. Acta Electronica Sinica, 2018, 46(3): 569-574. DOI: 10.3969/j.issn.0372-2112.2018.03.008.
A Recommendation Model Based on Dynamic Role Identification and Tensor Decomposition
user roles are typically not dynamically annotated based on changed user interest. The flaw may lead to the prediction inaccuracy of recommendation. Besides
sparsity of user rating data can also cause imprecise prediction. According to the above problems
this paper proposes a recommendation model based on dynamic role identification and tensor decomposition. Firstly
when user roles are quantitatively identified
information entropy is used to capture the diversity of user interest for solving the problem of indiscriminate user role identification. Secondly
considering user interest drifting
the dynamic role identification method based on time window is proposed
which enables the preference difference of individual rating data generated by static role identification and realizes the hierarchical processing of user rating data. Finally
a rating prediction model based on "user-item-role" tensor decomposition is constructed. And the characteristics of tensor in data dimension transformation and data compression is introduced into the model. In addition
by dealing with the missing value
accuracy of rating prediction is improved. Experiments demonstrate that this model can alleviate inaccurate prediction caused by indiscriminate identity of user role
and can effectively improve recommendation performance compared with the traditional recommendation model.