Analysis of Cultural Group Communication Behavior based on Deep Belief Network Algorithm

Meie Shi
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Abstract

The role of group communication in the study of cultural group behavior is very important, but there is a problem of large research error. Information statistics cannot solve the communication problem in the study of cultural group behavior, and the behavior recognition rate is low. Therefore, this paper proposes a deep belief network algorithm for the analysis of cultural group behavior communication. Firstly, the belief network theory is used to study the communication behavior, and in-depth mining is carried out according to group communication requirements to reduce the irrelevant factors in communication. Then, the deep belief network algorithm is used to continuously divide the behavior of cultural groups and form the final behavior recognition set. MATLAB simulation shows that the deep belief network algorithm's behavior recognition accuracy and behavior recognition time are better than the information statistics method when the communication requirements are known.
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基于深度信念网络算法的文化群体交流行为分析
群体传播在文化群体行为研究中的作用非常重要,但存在研究误差大的问题。信息统计无法解决文化群体行为研究中的交流问题,行为识别率较低。因此,本文提出了一种用于文化群体行为传播分析的深度信念网络算法。首先,运用信念网络理论研究传播行为,根据群体传播需求进行深度挖掘,减少传播中的无关因素。然后,利用深度信念网络算法对文化群体行为进行连续划分,形成最终的行为识别集。MATLAB 仿真表明,在已知交流要求的情况下,深度信念网络算法的行为识别准确率和行为识别时间均优于信息统计方法。
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