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Bibliographic Details
Main Authors: Raszewski, Luc, De Kock, Christine
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.10314
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author Raszewski, Luc
De Kock, Christine
author_facet Raszewski, Luc
De Kock, Christine
contents Malicious sockpuppet detection on Wikipedia is critical to preserving access to reliable information on the internet and preventing the spread of disinformation. Prior machine learning approaches rely on stylistic and meta-data features, but do not prioritise adaptability to author-specific behaviours. As a result, they struggle to effectively model the behaviour of specific sockpuppet-groups, especially when text data is limited. To address this, we propose the application of meta-learning, a machine learning technique designed to improve performance in data-scarce settings by training models across multiple tasks. Meta-learning optimises a model for rapid adaptation to the writing style of a new sockpuppet-group. Our results show that meta-learning significantly enhances the precision of predictions compared to pre-trained models, marking an advancement in combating sockpuppetry on open editing platforms. We release a new dataset of sockpuppet investigations to foster future research in both sockpuppetry and meta-learning fields.
format Preprint
id arxiv_https___arxiv_org_abs_2506_10314
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Detecting Sockpuppetry on Wikipedia Using Meta-Learning
Raszewski, Luc
De Kock, Christine
Machine Learning
Computation and Language
Malicious sockpuppet detection on Wikipedia is critical to preserving access to reliable information on the internet and preventing the spread of disinformation. Prior machine learning approaches rely on stylistic and meta-data features, but do not prioritise adaptability to author-specific behaviours. As a result, they struggle to effectively model the behaviour of specific sockpuppet-groups, especially when text data is limited. To address this, we propose the application of meta-learning, a machine learning technique designed to improve performance in data-scarce settings by training models across multiple tasks. Meta-learning optimises a model for rapid adaptation to the writing style of a new sockpuppet-group. Our results show that meta-learning significantly enhances the precision of predictions compared to pre-trained models, marking an advancement in combating sockpuppetry on open editing platforms. We release a new dataset of sockpuppet investigations to foster future research in both sockpuppetry and meta-learning fields.
title Detecting Sockpuppetry on Wikipedia Using Meta-Learning
topic Machine Learning
Computation and Language
url https://arxiv.org/abs/2506.10314