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An Automatic Trust Calculation Based on the Improved Kalman Filter Detection Algorithm

机译:基于改进卡尔曼滤波检测算法的信任自动计算

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In service-oriented systems, how much a service can be trusted is increasingly crucial for service consumers to make the best decision. Because the methods for deriving trust based on manually assigned feedback cost much time and suffer several drawbacks, automatic trust calculation is the only feasible method for large-scale service-oriented applications. Therefore an automatic trust calculation using other non-trust quality criterion values is proposed. To make the calculation accurate, the Kalman Filter is employed to filter out malicious non-trust values instead of directly filtering out malicious trust values. Furthermore, an improved algorithm is proposed by taking the relationship between the non-trust criterion value and its variance into account to offer higher detection accuracy. Although malicious data can be filtered out, dishonest or inaccurate values can still influence trust values. Hence similarity between consumers is used to weight the values from others. Finally, experiments are carried out to access the validation and robustness of our model. The results show that our algorithm can offer higher detection accuracy under more strategic malicious situations.
机译:在面向服务的系统中,对于服务使用者做出最佳决策而言,可以信任多少服务变得越来越重要。由于基于手动分配的反馈来获取信任的方法会花费大量时间并且存在多个缺点,因此自动信任计算是大规模面向服务应用程序的唯一可行方法。因此,提出了使用其他非信任质量标准值的自动信任计算。为了使计算准确,采用卡尔曼过滤器过滤掉恶意的非信任值,而不是直接过滤掉恶意的信任值。此外,通过考虑不信任标准值与其方差之间的关系,提出了一种改进的算法,以提供更高的检测精度。尽管可以过滤掉恶意数据,但不诚实或不正确的值仍会影响信任值。因此,消费者之间的相似性用于权衡其他消费者的价值。最后,进行实验以获取模型的有效性和鲁棒性。结果表明,在更具战略意义的恶意情况下,我们的算法可以提供更高的检测精度。

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