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A probabilistic-based approach towards trust evaluation using Poisson Hidden Markov Models and Bonus Malus Systems

机译:基于概率的泊松隐马尔可夫模型和Bonus Malus系统进行信任评估的方法

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In the paper, the uncertainty of trust is transformed into a probability vector denoting the probability distribution over possible trust levels of an entity that is hidden from observation but determined by its expected performance. We propose the use of Poisson Hidden Markov Models (PHMMs) for estimating the trust for entities in wireless environments, in which the Poisson distribution is used to describe the occurrences of behavioral patterns in peer-to-peer interactions. PHMMs allow us to explicitly consider an entity's unobserved trustworthiness that influences it's observed behaviors. As well, the hidden Markov process is associated with a Bonus-Malus System that is used to reduce the computational complexity of parameter estimations involved. An application of the model in the scenario of detection of probabilistic packet dropping attack has been investigated. The simulations demonstrate that the approach is capable of accurately estimating the (hidden) trust states probability distribution as well as the expected performance for the entities in the networks through their observed behaviors.
机译:在本文中,信任的不确定性被转换为一个概率向量,该概率向量表示实体的可能信任级别上的概率分布,该实体对于观察是隐藏的,但由其预期性能决定。我们建议使用Poisson隐马尔可夫模型(PHMM)来估计无线环境中实体的信任度,其中Poisson分布用于描述对等交互中行为模式的发生。 PHMM使我们能够明确考虑实体的不可观察的可信度,该可信度会影响其观察到的行为。同样,隐藏的马尔可夫过程与Bonus-Malus系统相关联,该系统用于减少所涉及参数估计的计算复杂性。研究了该模型在概率丢包攻击检测中的应用。仿真表明,该方法能够通过观察到的行为准确估计网络中实体的(隐藏)信任状态概率分布以及预期性能。

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