回顾历史数据泄露事件:网络安全大数据可视化和分析能告诉我们什么?

Emily Africk, Y. Levy
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引用次数: 1

摘要

媒体报道的数据泄露事件呈上升趋势,数量不断增加。此外,数据泄露会对组织产生重大的负面影响。本研究的重点是结合15年来网络安全大数据背景下商业智能的数据分析、可视化和定量分析经验。从2005年初到2019年底,Privacy Rights Clearinghouse数据泄露数据库提供了一个包含9015个数据泄露的大型数据集。这项工作的目的是对数据进行切片,并使用时间序列分析将其表示为与业务相关的可视化,这可以帮助高管了解复杂的网络安全漏洞、它们的影响以及它们随时间的趋势。随着时间的推移,我们创建了可视化图形,并解释了每种可视化在网络攻击背景下的含义。本项目旨在对隐私权信息交换所数据泄露数据库中超过15年的重要发现进行分类。这些发现通过关键数字和商业智能的定量分析来传达。虽然我们的项目没有涵盖数据集的每个方面(由于其规模很大),但它更多地关注数据的一个特定部分:事件类型及其在15年时间框架内的数量,以帮助企业高管可视化网络安全趋势。本文最后总结并讨论了网络安全可视化如何帮助各行业以及未来所需的研究。
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An examination of historic data breach incidents: What cybersecurity big data visualization and analytics can tell us?
Data breach incidents are reported in the media to be on the rise with continuously increasing numbers. Additionally, data breaches serve a major negative impact to organizations. This study focuses on combining experience in data analytics, visualization, and quantitative analysis for business intelligence in the context of cybersecurity big-data over a period of 15-years. A large data set containing 9,015 data breaches was provided via the Privacy Rights Clearinghouse data breach database from the start of 2005 to the end of 2019. The aim of this work was to slice the data as well as represent it into a business-related visualization using time-series analysis that can help executives understand complex cybersecurity breaches, their impact, and their trend over time. We have created visualization figures along with explanations of what each visualization means in the context of cyber-attacks over time. This project was set to serve as a breakdown of the important findings from the Privacy Rights Clearinghouse data breach database of over 15-years. These findings are communicated through both key numbers and quantitative analyses for business intelligence. While our project does not cover every aspect of the dataset (due to its significant size), it serves more as a focus on one particular part of the data: incident types and their volume over the 15-year timeframe to help business executives visualize cybersecurity trends. This paper ends with a conclusion and discussion on how such cybersecurity visualizations can help industries along with future research needed.
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