Simulation, modelling and classification of wiki contributors: Spotting the good, the bad, and the ugly

https://doi.org/10.1016/j.simpat.2022.102616Get rights and content
Under a Creative Commons license
open access

Highlights

  • Offline data simulation to balance classes and improve the classification accuracy.

  • Stream-based profiling of contributors based on side information and ORES.

  • Stream-based classification of well and ill-intended bot and human contributors.

  • Classification accuracy of approximately 90%.

  • Isolation of malign behaviour and prevention of wiki attacks.

Abstract

Data crowdsourcing is a data acquisition process where groups of voluntary contributors feed platforms with highly relevant data ranging from news, comments, and media to knowledge and classifications. It typically processes user-generated data streams to provide and refine popular services such as wikis, collaborative maps, e-commerce sites, and social networks. Nevertheless, this modus operandi raises severe concerns regarding ill-intentioned data manipulation in adversarial environments. This paper presents a simulation, modelling, and classification approach to automatically identify human and non-human (bots) as well as benign and malign contributors by using data fabrication to balance classes within experimental data sets, data stream modelling to build and update contributor profiles and, finally, autonomic data stream classification. By employing WikiVoyage – a free worldwide wiki travel guide open to contribution from the general public – as a testbed, our approach proves to significantly boost the confidence and quality of the classifier by using a class-balanced data stream, comprising both real and synthetic data. Our empirical results show that the proposed method distinguishes between benign and malign bots as well as human contributors with a classification accuracy of up to 92 %.

Keywords

Classification
Data reliability
Stream processing
Synthetic data
Data fabrication
Wiki contributors

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