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首页> 外文期刊>Physica, A. Statistical mechanics and its applications >Dynamics of bloggers' communities: Bipartite networks from empirical data and agent-based modeling
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Dynamics of bloggers' communities: Bipartite networks from empirical data and agent-based modeling

机译:博客社区的动态:来自经验数据和基于代理的建模的双向网络

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We present an analysis of the empirical data and the agent-based modeling of the emotional behavior of users on the Web portals where the user interaction is mediated by posted comments, like Blogs and Diggs. We consider the dataset of discussion-driven popular Diggs, in which all comments are screened by machine-learning emotion detection in the text, to determine positive and negative valence (attractiveness and aversiveness) of each comment. By mapping the data onto a suitable bipartite network, we perform an analysis of the network topology and the related time-series of the emotional comments. The agent-based model is then introduced to simulate the dynamics and to capture the emergence of the emotional behaviors and communities. The agents are linked to posts on a bipartite network, whose structure evolves through their actions on the posts. The emotional states (arousal and valence) of each agent fluctuate in time, subject to the current contents of the posts to which the agent is exposed. By an agent's action on a post its current emotions are transferred to the post. The model rules and the key parameters are inferred from the considered empirical data to ensure their realistic values and mutual consistency. The model assumes that the emotional arousal over posts drives the agent's action. The simulations are preformed for the case of constant flux of agents and the results are analyzed in full analogy with the empirical data. The main conclusions are that the emotion-driven dynamics leads to long-range temporal correlations and emergent networks with community structure, that are comparable with the ones in the empirical system of popular posts. In view of pure emotion-driven agents actions, this type of comparisons provide a quantitative measure for the role of emotions in the dynamics on real blogs. Furthermore, the model reveals the underlying mechanisms which relate the post popularity with the emotion dynamics and the prevalence of negative emotions (critique). We also demonstrate how the community structure is tuned by varying a relevant parameter in the model. All data used in these works are fully anonymized.
机译:我们对经验数据进行分析,并对基于Web门户的用户的情绪行为进行基于代理的建模,在Web门户上,用户交互由已发布的评论(例如Blogs和Diggs)介导。我们考虑由讨论驱动的流行Diggs数据集,其中所有注释都通过文本中的机器学习情感检测进行筛选,以确定每个注释的正价和负价(吸引力和厌恶性)。通过将数据映射到合适的两方网络上,我们对网络拓扑结构和情感评论的相关时间序列进行了分析。然后引入基于主体的模型来模拟动力学并捕获情绪行为和社区的出现。代理链接到双向网络上的帖子,双向网络的结构通过其对帖子的操作而演变。每个代理的情绪状态(配音和价)随时间变化,这取决于代理所接触的职位的当前内容。通过代理对帖子的操作,其当前的情绪会转移到帖子中。模型规则和关键参数是从考虑的经验数据中推论得出的,以确保它们的现实价值和相互一致性。该模型假定职位上的情绪唤醒驱动着代理的行为。对于恒定的助剂流量进行模拟,并与经验数据完全相似地分析结果。主要结论是,情绪驱动的动力学导致长期的时间相关性和具有社区结构的新兴网络,这与流行帖子经验系统中的可比性相当。考虑到纯情感驱动的代理行为,这种比较提供了一种量化的度量,用于衡量情感在真实博客动态中的作用。此外,该模型揭示了潜在的机制,这些机制将岗位受欢迎程度与情绪动态和负面情绪的普遍程度(批评)联系起来。我们还演示了如何通过更改模型中的相关参数来调整社区结构。这些作品中使用的所有数据都是完全匿名的。

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