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用于预测网络流行病早期发展的熵极值模型。

Entropy-extreme model for predicting the development of cyber epidemics at early stages.

作者信息

Kovtun Viacheslav, Grochla Krzysztof, Al-Maitah Mohammed, Aldosary Saad, Kempa Wojciech

机构信息

Computer Control Systems Department, Faculty of Intelligent Information Technologies and Automation, Vinnytsia National Technical University, Khmelnitske Shose str., 95, Vinnytsia 21000, Ukraine.

Internet of Things Group, Institute of Theoretical and Applied Informatics Polish Academy of Sciences, Bałtycka 5, 44-100 Gliwice, Poland.

出版信息

Comput Struct Biotechnol J. 2024 Aug 17;24:593-602. doi: 10.1016/j.csbj.2024.08.017. eCollection 2024 Dec.

Abstract

The approaches used in biomedicine to analyze epidemics take into account features such as exponential growth in the early stages, slowdown in dynamics upon saturation, time delays in spread, segmented spread, evolutionary adaptations of the pathogen, and preventive measures based on universal communication protocols. All these characteristics are also present in modern cyber epidemics. Therefore, adapting effective biomedical approaches to epidemic analysis for the investigation of the development of cyber epidemics is a promising scientific research task. The article is dedicated to researching the problem of predicting the development of cyber epidemics at early stages. In such conditions, the available data is scarce, incomplete, and distorted. This situation makes it impossible to use artificial intelligence models for prediction. Therefore, the authors propose an entropy-extreme model, defined within the machine learning paradigm, to address this problem. The model is based on estimating the probability distributions of its controllable parameters from input data, taking into account the variability characteristic of the last ones. The entropy-extreme instance, identified from a set of such distributions, indicates the most uncertain (most negative) trajectory of the investigated process. Numerical methods are used to analyze the generated set of investigated process development trajectories based on the assessments of probability distributions of the controllable parameters and the variability characteristic. The result of the analysis includes characteristic predictive trajectories such as the average and median trajectories from the set, as well as the trajectory corresponding to the standard deviation area of the parameters' values. Experiments with real data on the infection of Windows-operated devices by various categories of malware showed that the proposed model outperforms the classical competitor (least squares method) in predicting the development of cyber epidemics near the extremum of the time series representing the deployment of such a process over time. Moreover, the proposed model can be applied without any prior hypotheses regarding the probabilistic properties of the available data.

摘要

生物医学中用于分析流行病的方法考虑了诸如早期指数增长、饱和时动态减缓、传播中的时间延迟、分段传播、病原体的进化适应以及基于通用通信协议的预防措施等特征。所有这些特征在现代网络流行病中也同样存在。因此,将有效的生物医学方法应用于流行病分析以研究网络流行病的发展是一项很有前景的科研任务。本文致力于研究早期预测网络流行病发展的问题。在这种情况下,可用数据稀缺、不完整且有失真。这种情况使得无法使用人工智能模型进行预测。因此,作者提出了一种在机器学习范式内定义的熵极值模型来解决这个问题。该模型基于从输入数据估计其可控参数的概率分布,并考虑到这些数据的变异性特征。从一组这样的分布中确定的熵极值实例表明了所研究过程最不确定(最负)的轨迹。基于可控参数概率分布的评估和变异性特征,使用数值方法来分析所生成的一组研究过程发展轨迹。分析结果包括特征预测轨迹,例如该组中的平均轨迹和中位数轨迹,以及与参数值标准差区域相对应的轨迹。对各类恶意软件感染Windows操作系统设备的真实数据进行的实验表明,在预测代表此类过程随时间展开的时间序列极值附近的网络流行病发展时,所提出的模型优于经典的竞争对手(最小二乘法)。此外,所提出的模型可以在无需对可用数据的概率特性进行任何先验假设的情况下应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d068/11408996/40aed8b30b32/ga1.jpg

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