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Deep Probabilistic Modeling of User Behavior for Anomaly Detection via Mixture Density Networks

13 May 2025
Lu Dai
Wenxuan Zhu
Xuehui Quan
Renzi Meng
Sheng Cai
Yichen Wang
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Abstract

To improve the identification of potential anomaly patterns in complex user behavior, this paper proposes an anomaly detection method based on a deep mixture density network. The method constructs a Gaussian mixture model parameterized by a neural network, enabling conditional probability modeling of user behavior. It effectively captures the multimodal distribution characteristics commonly present in behavioral data. Unlike traditional classifiers that rely on fixed thresholds or a single decision boundary, this approach defines an anomaly scoring function based on probability density using negative log-likelihood. This significantly enhances the model's ability to detect rare and unstructured behaviors. Experiments are conducted on the real-world network user dataset UNSW-NB15. A series of performance comparisons and stability validation experiments are designed. These cover multiple evaluation aspects, including Accuracy, F1- score, AUC, and loss fluctuation. The results show that the proposed method outperforms several advanced neural network architectures in both performance and training stability. This study provides a more expressive and discriminative solution for user behavior modeling and anomaly detection. It strongly promotes the application of deep probabilistic modeling techniques in the fields of network security and intelligent risk control.

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@article{dai2025_2505.08220,
  title={ Deep Probabilistic Modeling of User Behavior for Anomaly Detection via Mixture Density Networks },
  author={ Lu Dai and Wenxuan Zhu and Xuehui Quan and Renzi Meng and Sheng Cai and Yichen Wang },
  journal={arXiv preprint arXiv:2505.08220},
  year={ 2025 }
}
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