Preserving Privacy and Quality of Service in Complex Event Processing through Event Reordering

S. Palanisamy, Frank Dürr, M. Tariq, K. Rothermel
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引用次数: 15

Abstract

The Internet of Things (IoT) envisions a huge number of networked sensors connected to the internet. These sensors collect large streams of data which serve as input to wide range of IoT applications and services such as e-health, e-commerce, and automotive services. Complex Event Processing (CEP) is a powerful tool that transforms streams of raw sensor data into meaningful information required by these IoT services. Often these streams of data collected by sensors carry privacy-sensitive information about the user. Thus, protecting privacy is of paramount importance in IoT services based on CEP. In this paper we present a novel pattern-level access control mechanism for CEP based services that conceals private information while minimizing the impact on useful non-sensitive information required by the services to provide a certain quality of service (QoS). The idea is to reorder events from the event stream to conceal privacy-sensitive event patterns while preserving non-privacy sensitive event patterns to maximize QoS. We propose two approaches, namely an ILP-based approach and a graph-based approach, calculating an optimal reordering of events. Our evaluation results show that these approaches are effective in concealing private patterns without significant loss of QoS.
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通过事件重排序保护复杂事件处理中的隐私和服务质量
物联网(IoT)设想将大量联网传感器连接到互联网。这些传感器收集大量数据流,作为电子医疗、电子商务和汽车服务等广泛物联网应用和服务的输入。复杂事件处理(CEP)是一种强大的工具,可以将原始传感器数据流转换为这些物联网服务所需的有意义的信息。这些由传感器收集的数据流通常带有用户的隐私敏感信息。因此,在基于CEP的物联网服务中,保护隐私至关重要。在本文中,我们提出了一种新的基于CEP的服务模式级访问控制机制,该机制可以隐藏私有信息,同时最小化对服务所需的有用非敏感信息的影响,以提供一定的服务质量(QoS)。其思想是对事件流中的事件重新排序,以隐藏隐私敏感的事件模式,同时保留非隐私敏感的事件模式,以最大限度地提高QoS。我们提出了两种方法,即基于ilp的方法和基于图的方法,来计算事件的最优重新排序。我们的评估结果表明,这些方法在隐藏私有模式方面是有效的,并且没有明显的QoS损失。
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