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Theoretical Foundation and Design Guideline for Reservoir Computing-based MIMO-OFDM Symbol Detection

Jere, Shashank ; Safavinejad, Ramin ; Liu, Lingjia

IEEE transactions on communications, 2023-09, Vol.71 (9), p.1-1 [Periódico revisado por pares]

New York: IEEE

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  • Título:
    Theoretical Foundation and Design Guideline for Reservoir Computing-based MIMO-OFDM Symbol Detection
  • Autor: Jere, Shashank ; Safavinejad, Ramin ; Liu, Lingjia
  • Assuntos: Computation ; deep neural network ; Detectors ; echo state network ; generalization error ; MIMO communication ; MIMO-OFDM and symbol detection ; Orthogonal Frequency Division Multiplexing ; receive processing ; Recurrent neural networks ; Reservoir computing ; Reservoirs ; Symbols ; Systems design ; Training ; Upper bound ; Upper bounds ; Wireless communication
  • É parte de: IEEE transactions on communications, 2023-09, Vol.71 (9), p.1-1
  • Descrição: In this paper, we derive a theoretical upper bound on the generalization error of reservoir computing (RC), a special category of recurrent neural networks (RNNs). The specific RC implementation considered in this paper is the echo state network (ESN), and an upper bound on its generalization error is derived via the empirical Rademacher complexity (ERC) approach. While recent work in deriving risk bounds for RC frameworks makes use of a non-standard ERC measure and a direct application of its definition, our work uses the standard ERC measure and tools allowing fair comparison with conventional RNNs. The derived result shows that the generalization error bound obtained for ESNs is tighter than the existing bound for vanilla RNNs, suggesting easier generalization for ESNs. With the ESN applied to symbol detection in MIMO-OFDM (Multiple Input Multiple Output-Orthogonal Frequency Division Multiplexing) systems, we show how the derived generalization error bound can guide underlying system design. Specifically, the derived bound together with the empirically characterized training loss is utilized to identify the optimum reservoir size in neurons for the ESN-based symbol detector. Finally, we corroborate our theoretical findings with results from simulations that employ 3GPP standards-compliant wireless channels, signifying the practical relevance of our work.
  • Editor: New York: IEEE
  • Idioma: Inglês

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