论文标题
不匹配解码的信息理论基础
Information-Theoretic Foundations of Mismatched Decoding
论文作者
论文摘要
Shannon的渠道编码定理表征了当使用最佳编码和解码策略时,可以通过通信通道可靠地传输的最大信息速率。但是,在许多情况下,诸如通道不确定性和实施约束之类的实际考虑因素排除了最佳解码器的使用。不匹配的解码问题通过考虑无法优化解码器的情况来解决此类方案,而是作为问题语句的一部分修复。这个问题本身不仅具有直接利益,而且与信息理论中其他长期存在的理论问题有着密切的联系。在这本专着中,我们对不匹配的解码问题进行了经典文献和最新发展,重点是无内存通道的可实现的随机编码率。我们提出了两个广泛考虑的可实现的速率,称为广义相互信息(GMI)和LM速率,并概述了它们的推导和性能。此外,我们通过多用户编码技术调查了几个提高的速率,以及在建立不匹配能力的上限方面的最新发展和挑战,以及在速率延伸理论中类似的不匹配编码问题。在整个专着中,我们重点介绍了各种应用程序和与其他突出的信息理论问题的联系。
Shannon's channel coding theorem characterizes the maximal rate of information that can be reliably transmitted over a communication channel when optimal encoding and decoding strategies are used. In many scenarios, however, practical considerations such as channel uncertainty and implementation constraints rule out the use of an optimal decoder. The mismatched decoding problem addresses such scenarios by considering the case that the decoder cannot be optimized, but is instead fixed as part of the problem statement. This problem is not only of direct interest in its own right, but also has close connections with other long-standing theoretical problems in information theory. In this monograph, we survey both classical literature and recent developments on the mismatched decoding problem, with an emphasis on achievable random-coding rates for memoryless channels. We present two widely-considered achievable rates known as the generalized mutual information (GMI) and the LM rate, and overview their derivations and properties. In addition, we survey several improved rates via multi-user coding techniques, as well as recent developments and challenges in establishing upper bounds on the mismatch capacity, and an analogous mismatched encoding problem in rate-distortion theory. Throughout the monograph, we highlight a variety of applications and connections with other prominent information theory problems.