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Lessons learned from correlation of honeypots' data and spatial data

机译:从蜜罐数据和空间数据的关联中学到的教训

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Honeypots and honeynets are unconventional security tools for the purpose of studying techniques, methods, tools, and goals of attackers. Analysis of data collected by these security tools is important for network security. In this paper, we focus on information about the locations, shapes of geographic features and the relationships between them, usually stored as coordinates and topology (spatial data). We discuss specific spatial data related to countries and analyse them in relationship to number of attempted attacks collected by honeypots. In the paper, we analyse the relationship between the spatial data and number of attempted attacks and properties of countries, from which attackers attack. We found that there is relationship between the spatial data related to countries and number of attempted attacks. Also the number of attacks is related to active population who use the Internet and level of infrastructure and service provision of country.
机译:蜜罐和蜜网是用于研究攻击者的技术,方法,工具和目标的非常规安全工具。这些安全工具收集的数据的分析对于网络安全非常重要。在本文中,我们重点关注有关地理特征的位置,形状及其之间的关系的信息,这些信息通常存储为坐标和拓扑(空间数据)。我们讨论了与国家有关的特定空间数据,并与蜜罐收集的未遂攻击次数进行了关系分析。在本文中,我们分析了空间数据与尝试攻击的次数以及国家/地区(攻击者从其进行攻击)之间的关系。我们发现,与国家/地区相关的空间数据与未遂攻击次数之间存在关联。攻击的数量还与使用Internet的活跃人口以及国家的基础设施和服务水平有关。

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