Computational communication research on information has been prevalent in recent years, as people are progressively inquisitive in social behavior and public opinion. Nevertheless, it is of great significance to analyze the direction of predominant sentiment from the sentiment communication perspective. In this paper, the information emotion propagation model is established by introducing revamp genetic algorithms into information emotion. In the process of information dissemination, both the information emotions and the network emotions are dynamic. For this model, the information emotions and the network nodes emotions are quantified as binary codes. The convergence effects, crossover and mutation algorithms are introduced. These factors all act on the transmission process via dynamic propagation rate, and the improved genetic algorithm also acts on the emotion transmission. In particular, the latter two algorithms are different from the existing biological domain. Based on the existing research results in other manuscripts, we perform simulation described above on the hybrid network. The simulation results demonstrate that the trend approximate to the actual data. As a result, our work can prove that our proposed model is essentially consistent with the actual emotion transmission phenomenon.
翻译:信息方面的计算通信研究近年来一直很普遍,因为人们对社会行为和公众舆论越来越敏感。然而,从情绪通信角度分析主导情绪的方向非常重要。在本文中,信息情感传播模式是通过将基因算法引入信息情感建立起来的。在信息传播过程中,信息情感和网络情感都是动态的。对于这一模式,信息情感和网络节点情绪被量化为二元代码。引入了聚合效应、交叉和突变算法。这些因素都通过动态传播率对传输过程产生影响,而基因算法的改进也影响情感传播。特别是后两种算法与现有的生物领域不同。根据其他手稿中的现有研究结果,我们在混合网络上进行上述的模拟。模拟结果表明,趋势与实际数据相近。结果,我们的工作可以证明,我们提议的模型与实际的情感传播现象基本一致。