We introduce a new algorithm for realizing maximum likelihood (ML) decoding for arbitrary codebooks in discrete channels with or without memory, in which the receiver rank-orders noise sequences from most likely to least likely. Subtracting noise from the received signal in that order, the first instance that results in a member of the codebook is the ML decoding. We name this algorithm GRAND for Guessing Random Additive Noise Decoding. We establish that GRAND is capacity-achieving when used with random codebooks. For rates below capacity, we identify error exponents, and for rates beyond capacity, we identify success exponents. We determine the scheme’s complexity in terms of the number of computations that the receiver performs...
Two main problems arise in the Multiple Access Channel (MAC): interference from different users, and...
Guessing random additive noise decoding (GRAND) is a noise-centric decoding method, which is suitabl...
Maximum-likelihood (ML) decoding of linear block codes on a symmetric channel is studied. Exact ML d...
We introduce a new algorithm for realizing Maximum Likelihood (ML) decoding in discrete channels wit...
We introduce a new algorithm for realizing maximum likelihood (ML) decoding for arbitrary codebooks ...
We introduce a new algorithm for Maximum Likelihood (ML) decoding for channels with memory. The algo...
Wireless communication technologies lie at the forefront of cutting edge and form the backbone of th...
Maximum Likelihood (ML) decoding of forward error correction codes is known to be optimally accurate...
We establish that during the execution of any Guessing Random Additive Noise Decoding (GRAND) algori...
Cataloged from PDF version of article.We extend our earlier work on guessing subject to distortion ...
International audienceIn the recent literature, the study of iterative LDPC decoders implemented on ...
In this work, we investigate guessing random additive noise decoding (GRAND) with quantized soft inp...
In a coded communication system with equiprobable signaling, MLD minimizes the word error probabilit...
We propose a decoding algorithm for tail-biting convolutional codes over phase noise channels. It ca...
The problem of exact maximum-likelihood (ML) decoding of general linear codes is well-known to be NP...
Two main problems arise in the Multiple Access Channel (MAC): interference from different users, and...
Guessing random additive noise decoding (GRAND) is a noise-centric decoding method, which is suitabl...
Maximum-likelihood (ML) decoding of linear block codes on a symmetric channel is studied. Exact ML d...
We introduce a new algorithm for realizing Maximum Likelihood (ML) decoding in discrete channels wit...
We introduce a new algorithm for realizing maximum likelihood (ML) decoding for arbitrary codebooks ...
We introduce a new algorithm for Maximum Likelihood (ML) decoding for channels with memory. The algo...
Wireless communication technologies lie at the forefront of cutting edge and form the backbone of th...
Maximum Likelihood (ML) decoding of forward error correction codes is known to be optimally accurate...
We establish that during the execution of any Guessing Random Additive Noise Decoding (GRAND) algori...
Cataloged from PDF version of article.We extend our earlier work on guessing subject to distortion ...
International audienceIn the recent literature, the study of iterative LDPC decoders implemented on ...
In this work, we investigate guessing random additive noise decoding (GRAND) with quantized soft inp...
In a coded communication system with equiprobable signaling, MLD minimizes the word error probabilit...
We propose a decoding algorithm for tail-biting convolutional codes over phase noise channels. It ca...
The problem of exact maximum-likelihood (ML) decoding of general linear codes is well-known to be NP...
Two main problems arise in the Multiple Access Channel (MAC): interference from different users, and...
Guessing random additive noise decoding (GRAND) is a noise-centric decoding method, which is suitabl...
Maximum-likelihood (ML) decoding of linear block codes on a symmetric channel is studied. Exact ML d...