Random Coding Error Exponents for the Two-User Interference Channel
Wasim Huleihel,Neri Merhav +1 more
12
TL;DR: In this paper, the authors derived lower bounds on the error exponents for the two-user interference channel under the random coding regime for several ensembles, including the standard random coding ensemble, where the codebooks are comprised of independently and identically distributed i.i.d. codewords.
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Abstract: This paper is about deriving lower bounds on the error exponents for the two-user interference channel under the random coding regime for several ensembles. Specifically, we first analyze the standard random coding ensemble, where the codebooks are comprised of independently and identically distributed (i.i.d.) codewords. For this ensemble, we focus on optimum decoding, which is in contrast to other, suboptimal decoding rules that have been used in the literature (e.g., joint typicality decoding, treating interference as noise, and so on). The fact that the interfering signal is a codeword, rather than an i.i.d. noise process, complicates the application of conventional techniques of performance analysis of the optimum decoder. In addition, unfortunately, these conventional techniques result in loose bounds. Using analytical tools rooted in statistical physics, as well as advanced union bounds, we derive single-letter formulas for the random coding error exponents. We compare our results with the best known lower bound on the error exponent, and show that our exponents can be strictly better. Then, in the second part of this paper, we consider more complicated coding ensembles and find a lower bound on the error exponent associated with the celebrated Han–Kobayashi random coding ensemble, which is based on superposition coding.
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Citations
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The Effect of Maximal Rate Codes on the Interfering Message Rate
TL;DR: It is shown that, for a subset of input distributions, the effect of maximum rate transmission on an additional transmitted message, over the additive Gaussian noise channel, is, effectively, that of an additional additiveGaussian noise.
Gaussian Intersymbol Interference Channels With Mismatch
TL;DR: In this article, the problem of channel coding over Gaussian intersymbol interference (ISI) channels with a given decoding rule was considered, where the mismatched decoder has an incorrect assumption on the channel impulse response.
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Mismatched Multi-Letter Successive Decoding for the Multiple-Access Channel
TL;DR: In this paper, a multi-letter successive decoding rule depending on an arbitrary non-negative decoding metric is considered, and achievable rate regions and error exponents are derived both for the standard MAC (independent codebooks), and for the cognitive MAC (one user knows both messages) with superposition coding.
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Mismatched multi-letter successive decoding for the multiple-access channel
Jonathan Scarlett,Alfonso Martinez,Albert Guillen i Fabregas +2 more
- 11 Aug 2014
TL;DR: Channel coding for the discrete memoryless multiple-access channel with a given (possibly suboptimal) decoding rule is studied, and achievable rate regions and error exponents are derived both for the standard MAC and cognitive MAC.
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•Posted Content
Mismatched Multi-Letter Successive Decoding for the Multiple-Access Channel
TL;DR: In this article, a multi-letter successive decoding rule depending on an arbitrary non-negative decoding metric is considered, and achievable rate regions and error exponents are derived both for the standard MAC (independent codebooks), and for the cognitive MAC (one user knows both messages) with superposition coding.
3
References
•Book
Information Theory: Coding Theorems for Discrete Memoryless Systems
I. Csiszar,János Körner +1 more
- 26 Sep 2014
TL;DR: This new edition presents unique discussions of information theoretic secrecy and of zero-error information theory, including the deep connections of the latter with extremal combinatorics.
4.2K
A new achievable rate region for the interference channel
Te Sun Han,K. Kobayashi +1 more
TL;DR: A new achievable rate region for the general interference channel which extends previous results is presented and evaluated and the capacity of a class of Gaussian interference channels is established.
1.9K
Interference channels
TL;DR: General bounds on the capacity region are obtained for discrete memoryless interference channels and for linear-superposition interference channels with additive white Gaussian noise.
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