Author:
Huang Xiaorui,Guo Shuai,Zhang Yunchu,Zhang Peidong,Xu Shiyuan
Abstract
Abstract
With the advent of the Internet era in modern society, the surge in network data has greatly increased the difficulty for users to obtain demand information. In order to provide customers with information that may be of interest to them, this paper proposes a belief collaborative recommendation optimization algorithm, which introduces DP synthesis rules and Smets synthesis rules to improve traditional DS synthesis rules and establishes network data recommendation models. This method realizes automatic recommendation of network data according to the self-property and historical behavior data of network customers. The experimental results show that the automatic recommendation method for network data proposed in this paper has higher recommendation accuracy.
Subject
General Physics and Astronomy
Cited by
2 articles.
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