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A Probabilistic-Based Trust Evaluation Model using Hidden Markov Models and Bonus Malus Systems

机译:基于概率的信任评估模型,使用隐马尔可夫模型和奖励Malus系统

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In the paper, the uncertainty of trust is transformed into a probability vector denoting the probability distribution over possible trust states that are hidden from observation but determined by an entity's expected performance. We suggest the use of Hidden Markov Models (HMMs) for estimating the unknown probability distributions in peer-to-peer interactions. HMMs allow us to explicitly consider an entity's unobserved trustworthiness that influences it's occurrences of behavioral patterns. The proposed hidden Markov processes are associated with a specified Bonus-Malus System (BMS) that is interpreted as a Markov chain with constant transition matrix and is used to simplify the structure of model and to reduce the computational complexity of parameter estimations in HMMs. The maximum likelihood estimators of the unknown HMM parameters are obtained using EM algorithm. An application of the model in the scenario of detection of probabilistic packet-drop 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 that have different observed behavioral patterns.
机译:在本文中,将信任的不确定性变为概率向量,该概率向量表示从观察隐藏但是由实体的预期性能确定的可能信任状态的概率分布。我们建议使用隐马尔可夫模型(HMMS)来估计对等交互中的未知概率分布。 HMMS允许我们明确地考虑一个实体的不可观察的可信度,这些可信度影响其行为模式的发生。所提出的隐藏马尔可夫进程与指定的奖励 - Malus系统(BMS)相关联,该系统(BMS)被解释为具有恒定转换矩阵的Markov链,用于简化模型的结构并降低HMMS中参数估计的计算复杂性。使用EM算法获得未知HMM参数的最大似然估计。研究了模型在检测概率分组攻击的情况下的应用。该模拟表明,该方法能够准确地估计(隐藏)信任状态概率分布以及具有不同观察到的行为模式的实体的预期性能。

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