Data Breach and Multiple Points to Stop It

D. Yao
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Abstract

Preventing unauthorized access to sensitive data is an exceedingly complex access control problem. In this keynote, I will break down the data breach problem and give insights into how organizations could and should do to reduce their risks. The talk will start with discussing the technical reasons behind some of the recent high-profile data breach incidents (e.g., in Equifax, Target), as well as pointing out the threats of inadvertent or accidental data leaks. Then, I will show that there are usually multiple points to stop data breach and give an overview of the relevant state-of-the-art solutions. I will focus on some of the recent algorithmic advances in preventing inadvertent data loss, including set-based and alignment-based screening techniques, outsourced screening, and GPU-based performance acceleration. I will also briefly discuss the role of non-technical factors (e.g., organizational culture on security) in data protection. Because of the cat-and-mouse-game nature of cybersecurity, achieving absolute data security is impossible. However, proactively securing critical data paths through strategic planning and placement of security tools will help reduce the risks. I will also point out a few exciting future research directions, e.g., on data leak detection as a cloud security service and deep learning for reducing false alarms in continuous authentication and the prickly insider-threat detection.
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数据泄露和多点阻止它
防止对敏感数据的非授权访问是一个极其复杂的访问控制问题。在这个主题演讲中,我将分解数据泄露问题,并就组织可以和应该如何降低风险给出见解。讲座将首先讨论最近一些引人注目的数据泄露事件背后的技术原因(例如,在Equifax, Target),以及指出无意或意外数据泄露的威胁。然后,我将展示通常有多个点来阻止数据泄露,并概述相关的最新解决方案。我将重点介绍在防止意外数据丢失方面的一些最新算法进展,包括基于集合和基于对齐的筛选技术、外包筛选和基于gpu的性能加速。我还将简要讨论非技术因素(例如,关于安全的组织文化)在数据保护中的作用。由于网络安全的猫鼠游戏性质,实现绝对的数据安全是不可能的。然而,通过战略规划和部署安全工具来主动保护关键数据路径将有助于降低风险。我还将指出一些令人兴奋的未来研究方向,例如,作为云安全服务的数据泄漏检测,以及用于减少连续身份验证中的误报的深度学习,以及棘手的内部威胁检测。
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