使用集成机器学习技术增强Twitter上社交机器人的检测

Sanjukta Mohanty, Satya Prakash Dwivedy, A. Acharya, Suvakanta Mohapatra, Shivam Swastik Sahoo, Sibadatta Samal, Smrutisrita Samal
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引用次数: 1

摘要

今天,我们的世界每天都有大量活跃的社交媒体用户,twitter是讨论政治、体育、娱乐等各种话题的最常用平台之一。它严重影响人们的生活,因此需要在这些地方保持健康的环境。因此,这些地方最终成为恶意活动的中心,其中有人试图根据自己的利益分享仇恨或操纵信息。大多数用户对这类东西的了解有限,因此成为这些活动的牺牲品。目前存在数百万个这样的自动账户,也被称为机器人,它们参与了传播错误信息和操纵公众舆论等恶意活动。本文提出的工作旨在通过实现集成机器学习方法(如自适应增强、梯度增强(GB)和极限梯度增强(XGB))来开发一个框架,以检测这些twitter机器人。我们使用了数据库社区公开提供的数据集,并评估了我们提出的方法来预测用户帐户是bot还是非bot。我们的实验表明,估计器GB在检测社交机器人方面达到了最高的精度。
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Enhancing the Detection of Social bots on Twitter using Ensemble machine Learning Technique
Today our world experiences a large number of active social media users daily, twitter being one the most used platform for discussion on various topics like politics, sports, entertainment etc. It highly influences people's lives and therefore it is required to maintain a healthy environment in such places. Thus these places eventually become the epicenter of malicious activities, wherein someone tries to share hate or manipulate information as per their own interest. The common mass which comprises the most part of the user base having limited knowledge of such things, fall prey to these activities. At present millions of such automated accounts exist, also known as bots which are involved in malicious activities like spreading misinformation and manipulating public opinion. The work presented here is aimed at developing a framework by implementing ensemble machine learning approaches like Adaptive boosting, Gradient boost (GB) and Extreme Gradient boost (XGB) to detect these twitter bots. We have used a dataset that is publicly available from database community and evaluate our proposed approach to predict whether the user account is a bot or non-bot. Our experiment demonstrates that the estimator GB achieves highest accuracy in detecting the social bots.
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