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Precise Characterization of the Second-Order Randomized Identification Capacity of Additive White Gaussian Noise Channels


Conceptos Básicos
The second-order randomized identification capacity of the Additive White Gaussian Noise Channel (AWGNC) has the same form as the second-order transmission capacity, with the only difference being that the maximum number of messages in randomized identification scales double exponentially in the blocklength.
Resumen
The paper establishes the second-order randomized identification capacity (RID capacity) of the Additive White Gaussian Noise Channel (AWGNC). The key contributions are: A refined version of Hayashi's theorem is proposed to prove the achievability part. This involves using the capacity-achieving output distribution as an auxiliary distribution instead of the actual output distribution induced by the uniform input distribution. A finer quantization method is developed to prove the converse part. The input alphabet is partitioned into small sectors instead of hypercubes, which provides a more accurate approximation. The results show that the second-order RID capacity of the AWGNC has the same form as the second-order transmission capacity, with the only difference being that the maximum number of messages in RID scales double exponentially in the blocklength.
Estadísticas
The following sentences contain key metrics or figures: The second-order transmission capacity of the AWGNC is log M*_T(ε|W^n) = nC(P) - √nV(P)Q^-1(ε) + O(log n), where M*_T(ε|W^n) is the optimal code size of the transmission code with the maximal block error rate less than ε and V(P) = log2 e P(P+2)/(2(P+1)^2) is the channel dispersion.
Citas
None.

Ideas clave extraídas de

by Zhicheng Liu... a las arxiv.org 04-23-2024

https://arxiv.org/pdf/2404.13685.pdf
Second-Order Identification Capacity of AWGN Channels

Consultas más profundas

How can the second-order RID capacity results be extended to other channel models beyond the AWGNC

The extension of the second-order RID capacity results to other channel models beyond the AWGNC involves adapting the concepts and techniques used in the context of the AWGNC to suit the characteristics of different channel models. One approach is to analyze the specific properties of the new channel model, such as input and output distributions, noise characteristics, and capacity constraints. By understanding these aspects, researchers can modify the achievability and converse proofs to accommodate the unique features of the new channel model. Additionally, the quantization method and resolvability concepts can be tailored to fit the requirements of the specific channel model under consideration. This adaptation process ensures that the second-order RID capacity results can be effectively applied to a broader range of channel models, providing insights into their identification capabilities.

What are the practical implications of the double exponential scaling of the maximum number of messages in randomized identification compared to the exponential scaling in traditional transmission

The double exponential scaling of the maximum number of messages in randomized identification compared to the exponential scaling in traditional transmission has significant practical implications. In scenarios where quick or small checks are required, such as IoT applications, control systems, and automotive domains, the ability to identify messages efficiently and reliably is crucial. The double exponential scaling allows for a much larger number of messages to be supported, enabling more robust and accurate identification processes. This increased capacity can enhance the reliability and security of communication systems, especially in applications where rapid decision-making based on identified messages is essential. The scalability of the randomized identification approach offers a powerful tool for handling large volumes of data with high accuracy and efficiency, making it well-suited for modern communication challenges.

Could the quantization approach used in the converse proof be applied to analyze the second-order identification capacity for other continuous-alphabet channels

The quantization approach used in the converse proof to analyze the second-order identification capacity for AWGNC can be applied to other continuous-alphabet channels with similar characteristics. By partitioning the input alphabet into small sectors and converting the problem to a discrete memoryless channel scenario, researchers can effectively analyze the identification capacity of other continuous-alphabet channels. The key lies in accurately quantizing the input alphabet to approximate the real output distribution induced by the input distribution. This method allows for the application of techniques developed for discrete memoryless channels to continuous-alphabet channels, providing insights into their identification capabilities. By leveraging the quantization approach, researchers can extend the analysis of second-order identification capacity to a broader range of continuous-alphabet channels, enhancing our understanding of their identification performance.
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