An Evolutionary Computation Approach for Twitter Bot Detection

APPLIED SCIENCES-BASEL(2022)

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摘要
Featured Application Our proposed application can be used to detect bot accounts on the social platform Twitter. Our models are based on evolutionary computation techniques such as genetic algorithms and genetic programming methods. These strategies enabled us to discover models with high interpretability of predictions and good generalization capabilities on unseen data as well. Bot accounts are automated software programs that act as legitimate human profiles on social networks. Identifying these kinds of accounts is a challenging problem due to the high variety and heterogeneity that bot accounts exhibit. In this work, we use genetic algorithms and genetic programming to discover interpretable classification models for Twitter bot detection with competitive qualitative performance, high scalability, and good generalization capabilities. Specifically, we use a genetic programming method with a set of primitives that involves simple mathematical operators. This enables us to discover a human-readable detection algorithm that exhibits a detection accuracy close to the top state-of-the-art methods on the TwiBot-20 dataset while providing predictions that can be interpreted, and whose uncertainty can be easily measured. To the best of our knowledge, this work is the first attempt at adopting evolutionary computation techniques for detecting bot profiles on social media platforms.
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关键词
machine learning, explainable AI, cybersecurity, supervised learning, binary classification, evolutionary computation, genetic algorithms, genetic programming, bot detection, Twitter
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