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Decision-Oriented Communications: Application to Energy-Efficient Resource Allocation

17 May 2019
Hang Zou
Chao Zhang
S. Lasaulce
L. Saludjian
P. Panciatici
ArXiv (abs)PDFHTML
Abstract

In this paper, we introduce the problem of decision-oriented communications, that is, the goal of the source is to send the right amount of information in order for the intended destination to execute a task. More specifically, we restrict our attention to how the source should quantize information so that the destination can maximize a utility function which represents the task to be executed only knowing the quantized information. For example, for utility functions under the form u(x; g)u\left(\boldsymbol{x};\ \boldsymbol{g}\right)u(x; g), x\boldsymbol{x}x might represent a decision in terms of using some radio resources and g\boldsymbol{g}g the system state which is only observed through its quantized version Q(g)Q(\boldsymbol{g})Q(g). Both in the case where the utility function is known and the case where it is only observed through its realizations, we provide solutions to determine such a quantizer. We show how this approach applies to energy-efficient power allocation. In particular, it is seen that quantizing the state very roughly is perfectly suited to sum-rate-type function maximization, whereas energy-efficiency metrics are more sensitive to imperfections.

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