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A novel framework for detecting social bots with deep neural networks and active learning

机译:一种具有深层神经网络和积极学习的社交机器人的新框架

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摘要

Microblogging is a popular online social network (OSN), which facilitates users to obtain and share news and information. Nevertheless, it is filled with a huge number of social bots that significantly disrupt the normal order of OSNs. Sina Weibo, one of the most popular Chinese OSNs in the world, is also seriously affected by social bots. With the growing development of social bots in Sina Weibo, they are increasingly indistinguishable from normal users, which presents more huge challenges in detecting social bots. Firstly, it is difficult to extract the features of social bots completely. Secondly, large-scale data collection and labeling of user data are extremely hard. Thirdly, the performance of classical classification approaches applied to social bot detection is not good enough. Therefore, this paper proposes a novel framework for detecting social bots in Sina Weibo based on deep neural networks and active learning (DABot). Specifically, 30 features from four categories, namely metadatabased, interaction-based, content-based, and timing-based are extracted to distinguish between social bots and normal users. Nine of these features are completely new features proposed in this paper. Moreover, active learning is employed to efficiently expand the labeled data. Then, a new deep neural network model called RGA is built to implement the detection of social bots, which makes use of a residual network (ResNet), a bidirectional gated recurrent unit (BiGRU), and an attention mechanism. After performance evaluation, the results show that DABot is more effective than the state-of-the-art baselines with the accuracy of 0.9887. (C) 2020 Elsevier B.V. All rights reserved.
机译:微博是一个受欢迎的在线社交网络(OSN),促进了用户获取和共享新闻和信息。尽管如此,它充满了大量的社交机器人,可以显着扰乱奥斯纳的正常顺序。新浪微博是世界上最受欢迎的中国奥斯人之一,也受到社交机床的严重影响。随着新浪微博的社交机床的发展,他们越来越难以区分来自普通用户,这在检测社交机器人方面具有更大的挑战。首先,很难完全提取社交机器人的特征。其次,大规模的数据收集和用户数据的标签非常硬。第三,应用于社交机器机器人检测的经典分类方法的性能并不好。因此,本文提出了一种基于深度神经网络和主动学习(Dabot)的新浪微博检测社交机器人的新框架。具体而言,从四个类别,即元旦,基于交互,基于内容的和基于时序的30个特征以区分社交机器人和普通用户。本文提出了九个功能是完全新的功能。此外,采用主动学习来有效地扩展标记数据。然后,建立一个名为RGA的新的神经网络模型,以实现对社交机器人的检测,这是利用残余网络(Reset),双向门控复发单元(Bigru)和注意机制。在绩效评估之后,结果表明,Dabot比最先进的基线更有效,准确性为0.9887。 (c)2020 Elsevier B.v.保留所有权利。

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