一种用于发现服务中查询状态推断的隐马尔可夫模型安全方案

A. Dahbi, M. Khair, H. Mouftah
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引用次数: 1

摘要

发现服务指的是一套网络服务,能够有效地跟踪和追踪物联网(IoT)中的对象。这些服务的部署可以通过由相应涉众发起的简单查询的形式执行,以便在云中/从云中存储/检索数据。此类服务的一个示例是EPCglobal发现服务。物联网中交换数据的极度敏感性和预期的大规模(例如EPCglobal Network)突出了能够区分安全查询和风险查询的安全方案的重要性,该方案基于从当前查询中提取的观察到的真实值向量,以及从过去查询中推断的模式。本文提出了一种概率安全方案,提高了EPCglobal网络中风险查询检测的准确性。我们提出的方案是基于隐马尔可夫模型(HMM),该模型首先被训练,然后用于推断手头查询的状态。我们假设从查询中提取的观测实值遵循高斯分布,这取决于手头查询的固有性质;即安全或有风险。我们进行了大量的实验。结果表明,基于hmm的安全方案提高了检测危险查询的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hidden Markov Model security scheme for query state inference in discovery services
Discovery Services refer to a suite of network services enabling efficient track-and-trace capabilities of objects in the Internet of Things (IoT). Deployment of such services may be performed in the form of simple queries originating from the corresponding stakeholders either to store/retrieve data in/from the Cloud. An example of such services is the EPCglobal Discovery Services. The extremely sensitive nature and the expected large scale of the exchanged data in the IoT (e.g, the EPCglobal Network) highlight the importance of a security scheme capable of distinguishing safe queries from risky ones, based both on a vector of observed real values extracted from the current query, and on a pattern inferred from the past queries. In this paper, we propose a probabilistic security scheme enhancing the accuracy of detecting risky queries in the EPCglobal Network. Our proposed scheme is based on a Hidden Markov Model (HMM) which is first trained, then used to infer the state of the query at hand. We assume that the observed real values, extracted from the queries, follow Gaussian distributions, depending on the inherent nature of the query at hand; i.e. safe or risky. We conducted extensive experiments. The results show that our HMM-based security scheme enhances the accuracy of detecting risky queries.
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