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A Regression Approach to Certain Information Transmission Problems

机译:某些信息传输问题的回归方法

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摘要

A general information transmission model, under independent and identically distributed Gaussian codebook and nearest neighbor decoding rule with processed channel output, is investigated using the performance metric of generalized mutual information. When the encoder and the decoder know the statistical channel model, it is found that the optimal channel output processing function is the conditional expectation operator, thus hinting a potential role of regression, a classical topic in machine learning, for this model. Without utilizing the statistical channel model, a problem formulation inspired by machine learning principles is established, with suitable performance metrics introduced. A data-driven inference algorithm is proposed to solve the problem, and the effectiveness of the algorithm is validated via numerical experiments. Extensions to more general information transmission models are also discussed.
机译:利用广义互信息的性能度量,研究了在独立且分布均匀的高斯码本和处理后的信道输出的最近邻解码规则下的通用信息传输模型。当编码器和解码器知道统计通道模型时,发现最佳通道输出处理函数是条件期望算符,从而暗示了回归的潜在作用,这是该模型中机器学习的经典主题。在不利用统计渠道模型的情况下,建立了受机器学习原理启发的问题公式,并引入了适当的性能指标。提出了一种数据驱动的推理算法来解决该问题,并通过数值实验验证了算法的有效性。还讨论了对更通用的信息传输模型的扩展。

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