2020
DOI: 10.48550/arxiv.2012.02523
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Joint Channel Estimation and Data Decoding using SVM-based Receivers

Abstract: Modern communication systems organize receivers in blocks in order to simplify their analysis and design. However, an approach that considers the receiver design from a wider perspective rather than treating it block-by-block may take advantage of the impacts of these blocks on each other and provide better performance. Herein, we can benefit from machine learning and compose a receiver model implementing supervised learning techniques. With this motivation, we consider a one-toone transmission system over a f… Show more

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“…Among the classical ML algorithms, SVMs gained high popularity and enjoy strong theoretical guarantees. A SVM based receiver that combines the pilot-based channel estimation, data demodulation and decoding processes in one joint operation was proposed in [33]. They considered first-order Gauss-Markov fading process and additive Gaussian noise with N dimensional encoding vector.…”
Section: Other Related Workmentioning
confidence: 99%
“…Among the classical ML algorithms, SVMs gained high popularity and enjoy strong theoretical guarantees. A SVM based receiver that combines the pilot-based channel estimation, data demodulation and decoding processes in one joint operation was proposed in [33]. They considered first-order Gauss-Markov fading process and additive Gaussian noise with N dimensional encoding vector.…”
Section: Other Related Workmentioning
confidence: 99%