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Fusion of data from sources with different levels of trust

机译:来自具有不同信任级别的来源的数据融合

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In the context of this paper, trust is defined to be “a measure of to what degree an information source is believed to be capable of producing information that conforms to fact.” No standard method has been adopted by the intelligence community for fusing data from sources with different levels of trust. This paper proposes an approach that extends the standard application of Bayesian inference to allow for the fact that any piece of intelligence data may be less than fully trustworthy. Based on a prototypical intelligence scenario from which synthetic data was generated, results indicate that trust models produce results which are closer to the ground truth than those for a model containing no trust variables, exhibit less variability and which provide a better basis for making correct decisions.
机译:在本文的上下文中,信任被定义为“据信能够产生符合事实的信息的程度的衡量标准。”智能界未采用标准方法,以融合来自不同程度的信任源的资料。本文提出了一种延长贝叶斯推理的标准应用的方法,以便任何智能数据都可能不受完全值得信赖的事实。基于生成合成数据的原型智能情景,结果表明信任模型产生比不包含信任变量的模型更靠近地面真理的结果,表现出更好的变化,并为制定正确决策提供更好的基础。

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