CVOct 2, 2025

User to Video: A Model for Spammer Detection Inspired by Video Classification Technology

arXiv:2510.06233v1h-index: 4IJCNN
Originality Incremental advance
AI Analysis

This addresses spam detection in social media platforms, offering a novel approach but with incremental technical contributions.

The paper tackles spammer detection by modeling user behavior as videos and applying video classification techniques, achieving improved performance over state-of-the-art methods on WEIBO and TWITTER datasets.

This article is inspired by video classification technology. If the user behavior subspace is viewed as a frame image, consecutive frame images are viewed as a video. Following this novel idea, a model for spammer detection based on user videoization, called UVSD, is proposed. Firstly, a user2piexl algorithm for user pixelization is proposed. Considering the adversarial behavior of user stances, the user is viewed as a pixel, and the stance is quantified as the pixel's RGB. Secondly, a behavior2image algorithm is proposed for transforming user behavior subspace into frame images. Low-rank dense vectorization of subspace user relations is performed using representation learning, while cutting and diffusion algorithms are introduced to complete the frame imageization. Finally, user behavior videos are constructed based on temporal features. Subsequently, a video classification algorithm is combined to identify the spammers. Experiments using publicly available datasets, i.e., WEIBO and TWITTER, show an advantage of the UVSD model over state-of-the-art methods.

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