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Deep Learning for Channel Coding via Neural Mutual Information Estimation

机译:通过神经互信息估计进行通道编码的深度学习

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End-to-end deep learning for communication systems, i.e., systems whose encoder and decoder are learned, has attracted significant interest recently, due to its performance which comes close to well-developed classical encoder-decoder designs. However, one of the drawbacks of current learning approaches is that a differentiable channel model is needed for the training of the underlying neural networks. In real-world scenarios, such a channel model is hardly available and often the channel density is not even known at all. Some works, therefore, focus on a generative approach, i.e., generating the channel from samples, or rely on reinforcement learning to circumvent this problem. We present a novel approach which utilizes a recently proposed neural estimator of mutual information. We use this estimator to optimize the encoder for a maximized mutual information, only relying on channel samples. Moreover, we show that our approach achieves the same performance as state-of-the-art end-to-end learning with perfect channel model knowledge.
机译:通信系统的端到端深度学习,即学习了编码器和解码器的系统,由于其性能接近发达的经典编码器-解码器设计,最近引起了人们的极大兴趣。但是,当前学习方法的缺点之一是,需要一个可区分的通道模型来训练基础神经网络。在现实世界中,很难使用这种信道模型,而且通常甚至根本不知道信道密度。因此,一些工作着重于生成方法,即从样本生成通道,或依靠强化学习来规避此问题。我们提出了一种利用最近提出的互信息神经估计器的新颖方法。我们仅使用信道样本,使用此估计器来优化编码器以获得最大的互信息。此外,我们证明了我们的方法具有完美的渠道模型知识,可实现与最新的端到端学习相同的性能。

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