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Adaptive deep Q-learning model for detecting social bots and influential users in online social networks

机译:用于检测社交网络中的社交机器人和有影响力的自适应深度Q学习模型

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摘要

In an online social network (like Twitter), a botmaster (i.e., leader among a group of social bots) establishes a social relationship among legitimate participants to reduce the probability of social bot detection. Social bots generate fake tweets and spread malicious information by manipulating the public opinion. Therefore, the detection of social bots in an online social network is an important task. In this paper, we consider social attributes, such as tweet-based attributes, user profile-based attributes and social graph-based attributes for detecting the social bots among legitimate participants. We design a deep Q-network architecture by incorporating a Deep Q-Learning (DQL) model using the social attributes in the Twitter network for detection of social bots based on updating Q-value function (i.e., state-action value function). We consider each social attribute of a user as a state and the learning agent's movement from one state to another state is considered as an action. For Q-value function, we consider all the state-action pairs in order to construct the state transition probability values between the state-action pairs. In the proposed DQL algorithm, the learning agent chooses a specific learning action with an optimal Q-value in each state for social bot detection. Further, we also propose an approach that identifies the most influential users (which are influenced by the social bots) based on tweets and the users' interactions. The experimentation using the datasets collected from Twitter network illustrates the efficacy of proposed model.
机译:在在线社交网络(如Twitter)中,Botmaster(即,一群社交机器人的领导者)在合法参与者之间建立了社会关系,以降低社会机器人检测的可能性。社交机器人通过操纵舆论来产生假推文并传播恶意信息。因此,在线社交网络中的社交机器人检测是一项重要任务。在本文中,我们考虑社会属性,例如基于推文的属性,基于推文的基于属性和基于社交图的属性,用于检测合法参与者之间的社交机器人。我们通过使用Twitter网络中的社会属性结合深度Q学习(DQL)模型来设计深度Q-Network架构,以检测基于更新Q值函数(即状态 - 动作值函数)的社交机器人。我们将用户的每个社会属性视为状态,并且学习代理从一个状态到另一个状态的移动被视为一个动作。对于Q值函数,我们考虑所有状态 - 动作对,以便在状态操作对之间构建状态转换概率值。在所提出的DQL算法中,学习代理在每个状态下选择特定的学习动作,用于社交机器人检测。此外,我们还提出了一种基于推文和用户的交互来识别最有影响力的用户(受社交机器人影响)的方法。使用从Twitter网络收集的数据集的实验说明了所提出的模型的功效。

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