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Task Oriented Channel State Information Quantization

机译:面向任务的信道状态信息量化

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摘要

In this paper, we propose a new perspective for quantizing a signal and more specifically the channel state information (CSI). The proposed point of view is fully relevant for a receiver which has to send a quantized version of the channel state to the transmitter. Roughly, the key idea is that the receiver sends the right amount of information to the transmitter so that the latter be able to take its (resource allocation) decision. More formally, the decision task of the transmitter is to maximize a utility function f(x; g) with respect to x (e.g., a power allocation vector) given the knowledge of a quantized version of the function parameters g. We exhibit a special case of an energy-efficient power control (PC) problem for which the optimal task oriented CSI quantizer (TOCQ) can be found analytically. For more general utility functions, we propose to use neural networks (NN) based learning. Simulations show that the compression rate obtained by adapting the feedback information rate to the function to be optimized may be significantly increased.
机译:在本文中,我们提出了一种用于量化信号的新视角,更具体地是信道状态信息(CSI)。所提出的观点与接收器完全相关,该接收器必须向发射器发送通道状态的量化版本。粗略地,关键的想法是接收器向发射机发送适量的信息,以便后者能够采取其(资源分配)决定。更正式地,发射器的决定任务是给定函数参数G的量化版本的知识来最大化X(例如,功率分配向量)的实用程序函数f(x; g)。我们展示了一个特殊的案例,节能功率控制(PC)问题,其可以分析地发现最佳任务的CSI量化器(TOCQ)。对于更普通的公用事业功能,我们建议使用基于神经网络(NN)的学习。模拟表明,通过将反馈信息速率适应要优化的功能来获得的压缩率可以显着增加。

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