SIAIFeb 3, 2024

Trustworthiness of $\mathbb{X}$ Users: A One-Class Classification Approach

arXiv:2402.02066v13 citationsh-index: 33aina
Originality Incremental advance
AI Analysis

This work addresses trustworthiness assessment on social media platforms like X, which is crucial for information credibility, but it is incremental as it builds on existing one-class classification methods.

The study tackled the problem of classifying X users as trusted or untrusted by proposing a novel regularization term for Subspace Support Vector Data Description (SSVDD) that optimizes subspace learning and data description, achieving superior performance compared to baseline and state-of-the-art models in experiments.

$\mathbb{X}$ (formerly Twitter) is a prominent online social media platform that plays an important role in sharing information making the content generated on this platform a valuable source of information. Ensuring trust on $\mathbb{X}$ is essential to determine the user credibility and prevents issues across various domains. While assigning credibility to $\mathbb{X}$ users and classifying them as trusted or untrusted is commonly carried out using traditional machine learning models, there is limited exploration about the use of One-Class Classification (OCC) models for this purpose. In this study, we use various OCC models for $\mathbb{X}$ user classification. Additionally, we propose using a subspace-learning-based approach that simultaneously optimizes both the subspace and data description for OCC. We also introduce a novel regularization term for Subspace Support Vector Data Description (SSVDD), expressing data concentration in a lower-dimensional subspace that captures diverse graph structures. Experimental results show superior performance of the introduced regularization term for SSVDD compared to baseline models and state-of-the-art techniques for $\mathbb{X}$ user classification.

Foundations

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