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Political social media bot detection: Unveiling cutting-edge feature selection and engineering strategies in machine learning model development

Zineb Ellaky, Faouzia Benabbou

2024Scientific African13 citationsDOIOpen Access PDF

Abstract

Over time, social media bots (SMBs), specifically political SMBs, have played a crucial role in influencing and spreading misinformation, manipulating public opinion, and harassing and intimidating users of online social networks (OSNs). This article aims to study previous works on the detection and analysis of political SMB activities and address critical challenges that significantly impact the effectiveness of SMB detection models. These challenges include feature engineering, feature selection (FS), and model implementation. Over 33 features were extracted from the Twibot-20 dataset, including content, user information, network, behavior, and temporal features. Various FS techniques are explored and compared to select the optimal features, comprising basic, filter, wrapper, embedded, and hybrid. The optimal features are then employed to train multiple machine-learning algorithms. To balance the dataset, the synthetic minority oversampling technique coupled with edited nearest neighbors (Smote-ENN) is used. The results showed an improvement in model performance, from an initial Area Under the Curve (AUC) of 90.40% and accuracy of 81.60% using the original set to an AUC of 99.80% for the test set and 100% for the training set. Decision Trees, Random Forest, Gradient Boosting, Adaboost, XGB, and Extra Trees emerge as the most effective for detecting political SMBs.

Topics & Concepts

OversamplingComputer scienceFeature selectionMachine learningAdaBoostArtificial intelligenceRandom forestBoosting (machine learning)Support vector machineSocial mediaEnsemble learningTest setDecision treeSet (abstract data type)Feature engineeringData miningDeep learningWorld Wide WebComputer networkProgramming languageBandwidth (computing)Spam and Phishing DetectionMisinformation and Its ImpactsHate Speech and Cyberbullying Detection
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