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Extended decision field theory with social-learning for long-term decision-making processes in social networks

机译:社会学习的扩展决策场理论,为社会网络长期决策过程

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Modeling and analysis of human behaviors in social networks are essential in fields such as online business, marketing, and finance. However, the establishment of a generalized decision-making framework for human behavior is challenging due to different decision structures among individuals. Thus, we propose a new decision-making framework, Decision Field Theory with Learning (DFT-L), which combines the DFT model and the DeG-root model. We investigated three factors influencing preference evolution: previous experiences, current evaluations, and neighbors' preferences. The equilibrium status of social networks within this framework is obtained as an explicit formula under the independent and identically distributed (IID) conditions on weight values. This facilitates the identification of limiting expected preference values and covariance matrices. A simulation analysis using simulated and real networks is performed to validate the DFT-L framework and to demonstrate its efficiency compared with the original DFT. Our finding confirms that the diffusion process within DFT-L propagates fastest in the random network and slowest in the ring-lattice network. We also show that interactions among people affect the agent's decision within DFT-L and intensify embedded society characteristics, which helps to analyze irregular behaviors such as information cascades in social networks. (C) 2019 Elsevier Inc. All rights reserved.
机译:社交网络中人类行为的建模与分析在网上业务,营销和金融等领域至关重要。然而,由于个体之间的不同决策结构,建立人类行为的广义决策框架是挑战性的。因此,我们提出了一种新的决策框架,决策场理论与学习(DFT-L),其结合了DFT模型和DEG-模型。我们调查了影响偏好进化的三个因素:以前的经验,当前评估和邻居的偏好。此框架内的社交网络的均衡状态是在重量值的独立和相同分布的(IID)条件下的明确公式。这有助于识别限制预期的偏好值和协方差矩阵。执行使用模拟和真实网络的模拟分析来验证DFT-L框架并与原始DFT相比展示其效率。我们的发现证实,DFT-L内的扩散过程在随机网络中最快传播,并在环形格子网络中最慢。我们还表明,人们之间的互动会影响代理人在DFT-L内的决定,并加强嵌入式社会特征,有助于分析社交网络中信息级联等不规则行为。 (c)2019 Elsevier Inc.保留所有权利。

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