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A method for Evaluating Initial Trust Value of Direct Trust and Recommender Trust

机译:一种评估直接信任和推荐信任的初始信任价值的方法

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This paper aims to get initial trust value of direct trust and recommender trust. Firstly, we gives domain representations for trust value and trust information structure; then defines trust purpose as class with properties, computes subordinate degree of each property to each trust rank based on fuzzy sets. For evaluating initial trust value of direct trust, we calculate correlation coefficient; establish a reasonable basic probability assignment for each property; merge basic probability assignment functions of all properties using evidence combination rule to get basic probability assignment function of trust purpose as the initial value of trust value. The calculation of initial trust value of recommender trust is similar to the calculation of direct trust value; the difference is that with the similarity of properties instead of the correlation coefficient of properties to construct basic probability assignment function. After getting trust value vector of direct trust and recommender trust, we adopt the decision-making based on the basic probability assignment to obtain the final result. The method that integrated processing of all properties using evidence theory gets trust value of trust purpose can eliminate the redundancy and conflicts that may exist between properties, can reduce uncertainty, obtains more accurate and reliable conclusions, produces meaningful information of trust purpose. The method that obtaining the final result with a certain decision-making selection rules after achieving trust vector on all trust sets provides a more rational approach for the study of trust level evaluation problem.
机译:本文旨在获得直接信任和推荐信任的初始信任价值。首先,我们为信任价值和信任信息结构提供域表示;然后将信任目的定义为具有属性的类,根据模糊集计算每个属性的每个属性的从属程度。为了评估直接信任的初始信任值,我们计算相关系数;为每个属性建立合理的基本概率分配;使用证据组合规则合并所有属性的基本概率分配函数,以获取信任目的的基本概率分配函数作为信任值的初始值。初始信任值的初始信任值的计算类似于直接信任值的计算;差异是,具有属性的相似性而不是构建基本概率分配功能的相关性的相关系数。在获得直接信任和推荐人信任的信任价值矢量之后,我们采用基于基本概率分配的决策,以获得最终结果。使用证据理论对所有属性进行整合的方法获得信任目标的信任值可以消除属性之间可能存在的冗余和冲突,可以减少不确定性,获得更准确和可靠的结论,产生有意义的信任信息。在实现所有信任集的信任向量之后获得最终结果的方法,在所有信任集中实现信任向量提供了更合理的方法,用于研究信任级别评估问题。

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