论文标题

面向目标的量化:分析,设计和应用资源分配

Goal-Oriented Quantization: Analysis, Design, and Application to Resource Allocation

论文作者

Zou, Hang, Zhang, Chao, Lasaulce, Samson, Saludjian, Lucas, Poor, Vincent

论文摘要

在本文中,考虑了接收者必须从量化的信息源中执行任务的情况。该任务是由一般目标函数的最小化问题$ f(x; g)$建模的,为此,必须从该参数的量化版本$ g $中获取决策$ x $。此问题与许多应用程序有关,例如,对于无线电资源分配(RA),智能电网中的高光谱效率通信,受控系统或数据聚类。通过诉诸高分辨率(HR)分析,它显示了如何设计一个量化器,该量化器可最大程度地减少$ f $的最低差距(通过完美了解$ g $)以及使用量化的$ g $有效达到的差异。进行的正式分析既提供了人力资源制度中的量化策略,又为一般制度提供了见解,并允许设计实用算法。该分析还允许人们为目标函数规律性属性与量化其参数的硬度之间关系的新的和基本问题提供一些元素。通过丰富的数值性能分析讨论并支持了派生的结果,其中研究了已知的RA目标功能,并通过将量化操作定制为最终任务,从而可以表现出非常显着的改进。

In this paper, the situation in which a receiver has to execute a task from a quantized version of the information source of interest is considered. The task is modeled by the minimization problem of a general goal function $f(x;g)$ for which the decision $x$ has to be taken from a quantized version of the parameters $g$. This problem is relevant in many applications e.g., for radio resource allocation (RA), high spectral efficiency communications, controlled systems, or data clustering in the smart grid. By resorting to high resolution (HR) analysis, it is shown how to design a quantizer that minimizes the gap between the minimum of $f$ (which would be reached by knowing $g$ perfectly) and what is effectively reached with a quantized $g$. The conducted formal analysis both provides quantization strategies in the HR regime and insights for the general regime and allows a practical algorithm to be designed. The analysis also allows one to provide some elements to the new and fundamental problem of the relationship between the goal function regularity properties and the hardness to quantize its parameters. The derived results are discussed and supported by a rich numerical performance analysis in which known RA goal functions are studied and allows one to exhibit very significant improvements by tailoring the quantization operation to the final task.

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