Insider Threat Detection Based on Adaptive Optimization DBN by Grid Search

Jiange Zhang, Yue Chen, Kuiwu Yang, Jian Zhao, Xincheng Yan
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Abstract

Aiming at the problem that one-dimensional parameter optimization in insider threat detection using deep learning will lead to unsatisfactory overall performance of the model, an insider threat detection method based on adaptive optimization DBN by grid search is designed. This method adaptively optimizes the learning rate and the network structure which form the two-dimensional grid, and adaptively selects a set of optimization parameters for threat detection, which optimizes the overall performance of the deep learning model. The experimental results show that the method has good adaptability. The learning rate of the deep belief net is optimized to 0.6, the network structure is optimized to 6 layers, and the threat detection rate is increased to 98.794%. The training efficiency and the threat detection rate of the deep belief net are improved.
基于网格搜索自适应优化DBN的内部威胁检测
针对深度学习内部威胁检测中一维参数优化导致模型整体性能不理想的问题,设计了一种基于网格搜索自适应优化DBN的内部威胁检测方法。该方法自适应优化学习率和构成二维网格的网络结构,并自适应选择一组优化参数进行威胁检测,优化了深度学习模型的整体性能。实验结果表明,该方法具有良好的适应性。将深度信念网络的学习率优化到0.6,网络结构优化到6层,威胁检测率提高到98.794%。提高了深度信念网络的训练效率和威胁检测率。
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