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Carry-free models and beyond

机译:免提型号及其他

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摘要

The generalized deterministic models recently proposed by Niesen and Maddah-Ali [1] successfully capture real-interference alignment as observed in Gaussian models. Simpler deterministic models, like ADT models [2], cannot demonstrate this phenomenon because they are limited in the set of channel gains they can model. This paper reinterprets the Niesen and Maddah-Ali models through the lens of carry-free operations. We further explore these carry-free models by considering i.i.d. unknown fading networks. In the unknown fading context, a carry-free model can be further simplified to a max-superposition model, where signals are superposed by a nonlinear max operation. Unlike in relay-networks with known fading and linear superposition, we find that decode-and-forward can perform arbitrarily better than compress-and-forward in max-superposition relay networks with unknown fading.
机译:Niesen和Maddah-Ali [1]最近提出的广义确定性模型成功地捕获了在高斯模型中观察到的实际干扰对齐方式。像ADT模型[2]这样的简单确定性模型无法证明这种现象,因为它们在可以建模的通道增益集合中受到限制。本文通过无进位操作的视角重新解释了Niesen和Maddah-Ali模型。我们通过考虑i.d.进一步探索这些无携带模式。未知的衰落网络。在未知衰落情况下,可将无进位模型进一步简化为最大叠加模型,其中信号通过非线性最大运算进行叠加。与具有已知衰落和线性叠加的中继网络不同,我们发现在具有未知衰落的最大叠加中继网络中,解码和转发可以比压缩转发具有任意更好的性能。

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