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Multisource basic probability assignment fusion based on information quality

机译:基于信息质量的多源基本概率分配融合

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摘要

Information quality has received extensive attention recently. Yager and Petry proposed an information quality suitable for the framework of probability theory, and proposed a method of fusing multisource information, which can improve the information quality required for decision-making. Then, Bouhamed et al. extended information quality to the theory of possibility. However, the basic probability assignment (BPA) in evidence theory can deal with uncertainty more effectively. Therefore, this work provides a companion paper that makes the method applicable to evidence theory. This method uses vector notation to represent BPA. A fusion method is designed to select the best quality subset based on two factors: information quality and source credibility function, and using the score function to verify the quality of each subset. Finally, a numerical example details the eight steps of the method, and uses the Iris data set and banknote authentication data set to illustrate the application of the method in pattern recognition.
机译:信息质量最近受到广泛的关注。 Yager和PETRY提出了适合概率理论框架的信息质量,并提出了一种融合多源信息的方法,可以提高决策所需的信息质量。然后,Bouhamed等人。将信息质量扩展到可能性理论。然而,证据理论中的基本概率分配(BPA)可以更有效地处理不确定性。因此,这项工作提供了一种伴随的纸质,使得该方法适用于证据理论。该方法使用矢量表示法表示BPA。融合方法旨在根据两个因素选择最佳质量子集:信息质量和源信誉函数,并使用得分函数来验证每个子集的质量。最后,一个数字示例详细说明了方法的八个步骤,并使用虹膜数据集和纸币认证数据集来说明模式识别中的方法的应用。

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