In this work, we investigate guessing random additive noise decoding (GRAND) with quantized soft input. First, we analyze the achievable rate of ordered reliability bits GRAND (ORBGRAND), which uses the rank order of the reliability as quantized soft information. We show that multi-line ORBGRAND can approach capacity for any signal-to-noise ratio (SNR). We then introduce discretized soft GRAND (DSGRAND), which uses information from a conventional quantizer. Simulation results show that DSGRAND well approximates maximum-likelihood (ML) decoding with a number of quantization bits that is in line with current soft decoding implementations. For a (128,106) CRC-concatenated polar code, the basic ORBGRAND is able to match or outperform CRC-aided ...
We introduce a new algorithm for realizing maximum likelihood (ML) decoding for arbitrary codebooks ...
We introduce a new algorithm for realizing maximum likelihood (ML) decoding for arbitrary codebooks ...
Maximum Likelihood (ML) decoding of forward error correction codes is known to be optimally accurate...
Maximum Likelihood (ML) decoding of forward error correction codes is known to be optimally accurate...
Guessing Random Additive Noise Decoding (GRAND) is a universal decoding algorithm that can be used t...
Modern applications are driving demand for ultra- reliable low-latency communications, rekindling i...
Modern applications are driving demand for ultra- reliable low-latency communications, rekindling i...
We establish that during the execution of any Guessing Random Additive Noise Decoding (GRAND) algori...
Error correction techniques traditionally focus on the co-design of restricted code-structures in ta...
Maximum Likelihood (ML) decoding of forward error correction codes is known to be optimally accurate...
Maximum Likelihood (ML) decoding of forward error correction codes is known to be optimally accurate...
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 in discrete channels wit...
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 in discrete channels wit...
We introduce a new algorithm for realizing maximum likelihood (ML) decoding for arbitrary codebooks ...
We introduce a new algorithm for realizing maximum likelihood (ML) decoding for arbitrary codebooks ...
Maximum Likelihood (ML) decoding of forward error correction codes is known to be optimally accurate...
Maximum Likelihood (ML) decoding of forward error correction codes is known to be optimally accurate...
Guessing Random Additive Noise Decoding (GRAND) is a universal decoding algorithm that can be used t...
Modern applications are driving demand for ultra- reliable low-latency communications, rekindling i...
Modern applications are driving demand for ultra- reliable low-latency communications, rekindling i...
We establish that during the execution of any Guessing Random Additive Noise Decoding (GRAND) algori...
Error correction techniques traditionally focus on the co-design of restricted code-structures in ta...
Maximum Likelihood (ML) decoding of forward error correction codes is known to be optimally accurate...
Maximum Likelihood (ML) decoding of forward error correction codes is known to be optimally accurate...
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 in discrete channels wit...
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 in discrete channels wit...
We introduce a new algorithm for realizing maximum likelihood (ML) decoding for arbitrary codebooks ...
We introduce a new algorithm for realizing maximum likelihood (ML) decoding for arbitrary codebooks ...
Maximum Likelihood (ML) decoding of forward error correction codes is known to be optimally accurate...