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Universal a posteriori metrics game

机译:通用后验指标游戏

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摘要

Over binary input channels, the uniform distribution is a universal prior, in the sense that it maximizes the worst case mutual information of all binary input channels and achieves at least 94.2% of the capacity. In this paper, we address a similar question. We look for the best collection of finitely many a posteriori metrics, to maximize the worst case mismatched mutual information achieved by decoding with these metrics (instead of an optimal decoder such as the Maximum Likelihood (ML) tuned to the true channel). It is shown that for binary input and output channels, two metrics suffice to actually achieve the same performance as an optimal decoder. In particular, this implies that there exist a decoder which is generalized linear and achieves at least 94.2% of the compound capacity on any compound set, without knowledge of the underlying set.
机译:在二进制输入通道上,均匀分布是一个普遍的先验,从某种意义上说,它使所有二进制输入通道的最坏情况的互信息最大化,并至少达到容量的94.2%。在本文中,我们解决了一个类似的问题。我们寻求有限数量的后验度量的最佳集合,以最大化通过使用这些度量进行解码而获得的最坏情况不匹配的互信息(而不是诸如优化到真实信道的最大似然(ML)之类的最佳解码器)。结果表明,对于二进制输入和输出通道,两个指标足以实现与最佳解码器相同的性能。特别地,这意味着存在一种解码器,该解码器是广义线性的,并且在不了解基础集的情况下,在任何复合集上都达到了至少94.2%的复合容量。

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