根据通信网络的频率调整网络保险费

S. Indratno, Y. Antonio, S. Saputro
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引用次数: 0

摘要

本研究比较了有无通讯网络效应频率的网路保险保费。作为一个网络安全因素,通信网络中的频率影响着网络攻击的传播速度。这意味着网络或高活动节点比低活动网络更容易受到攻击。传统上,网络保险定价考虑历史数据来设定保费或费率。反过来,网络安全水平可以使用基于流行病模型的蒙特卡罗模拟来评估。该模拟需要传播参数,如感染率、恢复率和自感染率。我们的想法是将感染率修改为通信网络频率的函数。基于节点的模型使用概率分布作为通信机制来生成数据。该算法采用购物篮分析中共同购买网络的形成来构建加权边和节点。模拟用于比较初始感染率和修改后的感染率。本文以棱镜图拓扑和Petersen图拓扑为例进行了研究。相对差是比较保费调整重要性的指标。结果表明,通信网络中低电平节点的溢价可达初始溢价的28.28%。对于一个网络,可以比初始网络保险费低20.99%。根据这些结果,保险公司可以根据电脑使用情况调整网络保险费,以提供更合适的价格。
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Adjusting cyber insurance premiums based on frequency in a communication network
This study compares cyber insurance premiums with and without a communication network effect frequency. As a cybersecurity factor, the frequency in a communication network influences the speed of cyberattack transmission. It means that a network or a high activity node is more vulnerable than a network with low activity. Traditionally, cyber insurance pricing considers historical data to set premiums or rates. Conversely, the network security level can evaluate using the Monte Carlo simulation based on the epidemic model. This simulation requires spreading parameters, such as infection rate, recovery rate, and self-infection rate. Our idea is to modify the infection rate as a function of the frequency in a communication network. The node-based model uses probability distributions for the communication mechanism to generate the data. It adopts the co-purchase network formation in market basket analysis for building weighted edges and nodes. Simulations are used to compare the initial and modified infection rates. This paper considered prism and Petersen graph topology as case studies. The relative difference is a metric to compare the significance of premium adjustment. The results show that the premium for a node with a low level in a communication network can reach 28.28% lower than the initial premium. The premium can reach 20.99% lower than the initial network premium for a network. Based on these results, insurance companies can adjust cyber insurance premiums based on computer usage to offer a more appropriate price.
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
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3.00
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0.00%
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