Information Diffusion on Complex Networks: A Novel Approach Based on Topic Modeling and Pretopology Theory

Thi Kim Thoa Ho, Quang Vu Bui, M. Bui
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引用次数: 3

Abstract

In this research, we exploit a novel approach for propagation processes on a network related to textual information by using topic modeling and pretopology theory. We first introduce the textual agent’s network in which each agent represents a node which contains specific properties, particularly the agent’s interest. Agent’s interest is illustrated through the topic’s probability distribution which is estimated based on textual information using topic modeling. Based on textual agent’s network, we proposed two information diffusion models. The first model, namely Textual-Homo-IC, is an expanded model of independent cascade model in which the probability of infection is formed on homophily that is measured based on agent’s interest similarity. In addition to expressing the Textual-Homo-IC model on the static network, we also reveal it on dynamic agent’s network where there is transformation of not only the structure but also the node’s properties during the spreading process. We conducted experiments on two collected datasets from NIPS and a social network platform, Twitter, and have attained satisfactory results. On the other hand, we continue to exploit the dissemination process on a multi-relational agent’s network by integrating the pseudo-closure function from pretopology theory to the cascade model. By using pseudo-closure or stochastic pseudo-closure functions to define the set of neighbors, we can capture more complex kind of neighbors of a set. In this study, we propose the second model, namely Textual-Homo-PCM, an expanded model of pretopological cascade model, a general model for information diffusion process that can take place in more complex networks such as multi-relational networks or stochastic graphs. In Textual-Homo-PCM, pretopology theory will be applied to determine the neighborhood set on multi-relational agent’s network through pseudo-closure functions. Besides, threshold rule based on homophily will be used for activation. Experiments are implemented for simulating Textual-Homo-PCM and we obtained expected results. The work in this paper is an extended version of our paper [T. K. T. Ho, Q. V. Bui and M. Bui, Homophily independent cascade diffusion model based on textual information, in Computational Collective Intelligence, eds. N. T. Nguyen, E. Pimenidis, Z. Khan and B. Trawiski, Lecture Notes in Computer Science, Vol. 11055 (Springer International Publishing, 2018), pp. 134–145] presented in ICCCI 2018 conference.
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复杂网络中的信息扩散:一种基于主题建模和预拓扑理论的新方法
在本研究中,我们利用主题建模和预拓扑理论开发了一种新的方法来处理与文本信息相关的网络传播过程。我们首先介绍文本代理网络,其中每个代理代表一个包含特定属性的节点,特别是代理的兴趣。通过主题的概率分布来说明Agent的兴趣,该概率分布是基于文本信息,使用主题建模来估计的。基于文本智能体网络,提出了两种信息扩散模型。第一个模型是text - homoo - ic,它是独立级联模型的扩展模型,在该模型中,基于agent的兴趣相似性度量的同质性形成感染的概率。除了在静态网络上表达text - homo - ic模型外,我们还在动态智能体网络上展示了该模型,其中在传播过程中不仅存在结构的变化,而且存在节点属性的变化。我们在NIPS和社交网络平台Twitter上收集了两个数据集,并进行了实验,得到了满意的结果。另一方面,我们通过将预拓扑理论的伪闭包函数与级联模型相结合,继续探索多关系智能体网络上的传播过程。通过使用伪闭包函数或随机伪闭包函数来定义邻域集,我们可以捕获集合中更复杂类型的邻域。在本研究中,我们提出了第二种模型,即text - homo - pcm,这是一种扩展的预拓扑级联模型,是一种可以在更复杂的网络(如多关系网络或随机图)中发生的信息扩散过程的一般模型。在text - homo - pcm中,预拓扑理论将通过伪闭包函数来确定多关系智能体网络上的邻域集。并采用基于同态性的阈值规则进行激活。进行了模拟文本-同源- pcm的实验,取得了预期的结果。本文的工作是我们的论文[T。何国栋,基于文本信息的同质无关级联扩散模型,计算集体智能,编。N. T. Nguyen, E. Pimenidis, Z. Khan和B. Trawiski,《计算机科学讲义》,Vol. 11055(施普林格International Publishing, 2018), pp. 134-145]在ICCCI 2018年会议上发表。
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