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Construction and Application of E-Government Simulation Network Experimental Teaching Practice Environment under the Background of Machine Learning

机译:电子政局模拟网络实验教学实践环境在机床学习背景下的构建与应用

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With the rapid development of economy and Internet technology, e-government has been reflected in the reform of government information management and is closely related to the security of e-government networks. Existing technologies for evaluating network security can provide good evaluation results when dealing with deterministic data, but they are not sufficient to evaluate the uncertainty of information. In order to solve the problem of the construction and realization of the network training environment, a network security assessment method based on gray relational analysis and D-S theory proof is proposed. First, the scaling method is used to determine the weights of different levels of indicators, because different levels of indicators have different effects on the network state. Secondly, taking into account the differences in the degree of participation of different indicators at different levels, the participation function of each level indicator at the level is determined and a weighted amplitude coefficient to reduce the overall uncertainty is established. The network security situation is sudden and volatile. Therefore, the network security prediction method should have a good ability to deal with nonlinear problems. In this case, a network security state prediction method based on the GM performance model is proposed. The GM performance model has excellent nonlinear debugging functions. It has low requirements on the number of samples and good practicability. The experimental results show that the dynamic decision server push framework based on the XGBoost algorithm proposed in this paper has better performance than the single push method for push server, can use network resources appropriately, and improves the network environment security rate by at least 50%.
机译:随着经济和互联网技术的快速发展,电子政务已反映在政府信息管理的改革中,与电子政务网络的安全密切相关。用于评估网络安全性的现有技术可以在处理确定性数据时提供良好的评估结果,但它们不足以评估信息的不确定性。为了解决网络训练环境的构建和实现问题,提出了一种基于灰色关系分析和D-S理论证据的网络安全评估方法。首先,缩放方法用于确定不同程度的指标的权重,因为不同的指示器水平对网络状态具有不同的影响。其次,考虑到不同程度不同指标的参与程度的差异,确定了各级指标的参与功能,并确定了减少总不确定性的加权幅度系数。网络安全情况是突然和挥发性的。因此,网络安全预测方法应该具有良好的处理非线性问题的能力。在这种情况下,提出了一种基于GM性能模型的网络安全状态预测方法。 GM性能模型具有出色的非线性调试功能。它对样品数量和良好实用性有低要求。实验结果表明,基于本文提出的XGBoost算法的动态决策服务器推送框架具有比推送服务器的单个推送方法更好的性能,可以适当地使用网络资源,并提高网络环境安全率至少50% 。

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