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Confidence Combination Methods in Multi-expert Systems

机译:多专家系统中的置信组合方法

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摘要

In the proposed paper, we investigate the combination of the multi-expert system in which each expert outputs a class label as well as a corresponding confidence measure. We create a special confidence measurement which is common for all experts and use it as a basis for the combination. We develop three combination methods. The first method is theoretically optimal but requires very large representative training data and storage memory for look-up table. It is actually impractical. The second method is suboptimal and reduces greatly the required training data and memory space. The last method is a simplified version of the second and needs the least training data and memory space. All three methods demand no mutual independence of the experts, thus should be useful in many applications.
机译:在提出的论文中,我们研究了多专家系统的组合,其中每个专家都输出一个类别标签以及相应的置信度。我们创建了一种特殊的置信度度量,它对所有专家都是通用的,并将其用作合并的基础。我们开发了三种组合方法。第一种方法在理论上是最佳的,但是需要非常大的代表性训练数据和用于查找表的存储空间。这实际上是不切实际的。第二种方法不是最优的,并且大大减少了所需的训练数据和存储空间。最后一种方法是第二种方法的简化版本,并且需要最少的训练数据和内存空间。所有这三种方法都不需要专家的相互独立性,因此在许多应用程序中应该很有用。

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