用于 Twitter 上机器人检测的无监督机器学习:生成和选择准确聚类的特征

Raad Al-azawi, S. Al-Mamory
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引用次数: 0

摘要

Twitter 是一个流行的社交媒体平台,被个人和企业广泛使用。然而,它很容易受到僵尸攻击,从而对社会造成负面影响。有监督的机器学习技术可以检测僵尸,但需要标注数据来区分人类用户和僵尸用户。Twitter 会产生大量未标记的数据,而标记这些数据的成本很高。无监督机器学习技术,特别是聚类算法,对于管理这些数据和降低计算复杂度至关重要。有效的特征选择对于聚类是必要的,因为有些特征比其他特征更重要。本研究旨在利用聚类算法提高特征可靠性、引入新特征并减少特征,从而提高机器人识别准确率。该研究在四种聚类算法(包括聚类层次结构、k-medoids、DBSCAN 和 K-means)中实现了 0.99 的准确率。这是通过最小化数据集维度和选择基本特征实现的。通过采用无监督机器学习技术,Twitter 可以更有效地检测和缓解僵尸攻击,从而对社会产生积极影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Machine Learning for Bot Detection on Twitter: Generating and Selecting Features for Accurate Clustering
Twitter is a popular social media platform that is widely used by individuals and businesses. However, it is vulnerable to bot attacks, which can have negative effects on society. Supervised machine learning techniques can detect bots but require labeled data to differentiate between human and bot users. Twitter generates a significant amount of unlabeled data, which can be expensive to label. Unsupervised machine learning techniques, specifically clustering algorithms, are crucial for managing this data and reducing computational complexity. Effective feature selection is necessary for clustering, as some features are more important than others. This study aims to enhance feature reliability, introduce new features, and reduce them to improve bot identification accuracy using clustering algorithms. The study achieved an accuracy rate of 0.99 in four clustering algorithms, including agglomerative hierarchy, k-medoids, DBSCAN, and K-means. This was accomplished by minimizing dataset dimensions and selecting essential features. By employing unsupervised machine learning techniques, Twitter can detect and mitigate bot attacks more efficiently, which can positively impact society  
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