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Weighted Probabilistic Opinion Pooling Based on Cross-Entropy

机译:基于交叉熵的加权概率观点库

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In this work we focus on opinion pooling in the finite group of sources introduced in. This approach, heavily exploiting Kullback-Leibler divergence (also known as cross-entropy), allows us to combine sources' opinions given in probabilistic form, i.e. represented by the probability mass function (pmf). However, this approach assumes that sources are equally reliable with no preferences on, e.g., importance of a particular source. The discussion about the influence of the combination by preferences among sources (represented by weights) and numerical demonstration of the derived theory on an illustrative example form the core of this contribution.
机译:在这项工作中,我们专注于引入的有限来源中的观点汇总。这种方法大量利用了Kullback-Leibler散度(也称为交叉熵),使我们可以结合概率形式给出的观点,即概率质量函数(pmf)。但是,该方法假定源是同等可靠的,并且不偏爱例如特定源的重要性。关于源之间的偏好(以权重表示)对组合的影响的讨论以及派生理论在一个示例性例子上的数值演示,构成了这一贡献的核心。

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