论文标题

多代理通信的以任务为导向的数据压缩通过位键盘的频道

Task-Oriented Data Compression for Multi-Agent Communications Over Bit-Budgeted Channels

论文作者

Mostaani, Arsham, Vu, Thang X., Chatzinotas, Symeon, Ottersten, Björn

论文摘要

机间通信的各种应用正在上升。无论是用于自动驾驶车辆还是所有物品的互联网,机器都比以往任何时候都更加连接,以提高其完成给定任务的性能。尽管在传统的通信中,目标通常是在新兴任务范式下重建基础信息,但沟通的目的是使接收端能够做出更明智的决定或更精确的估计/计算。在本文中,在这些最近的发展中,我们对多代理系统(MAS)进行了间接设计,在该设计中,代理商合作以最大程度地提高了协作任务的平均折扣一阶段奖励总和。由于代理商之间的货币数量有些数量,每个代理都应有效地表示其本地观察结果,并传达观测值的抽象版本,以改善协作任务绩效。我们首先表明,可以将此问题近似为数据量化问题的一种形式,我们称之为面向任务的数据压缩(TODC)。然后,我们引入了信息压缩算法(SAIC)的状态 - 聚集,以解决公式的TODC问题。结果表明,SAIC能够就折扣奖励的总和来实现近乎最佳的性能。所提出的算法应用于几何共识问题,并将其性能与多个基准测试进行了比较。数值实验证实了这种间接设计方法对以任务为导向的多代理通信的承诺。

Various applications for inter-machine communications are on the rise. Whether it is for autonomous driving vehicles or the internet of everything, machines are more connected than ever to improve their performance in fulfilling a given task. While in traditional communications the goal has often been to reconstruct the underlying message, under the emerging task-oriented paradigm, the goal of communication is to enable the receiving end to make more informed decisions or more precise estimates/computations. Motivated by these recent developments, in this paper, we perform an indirect design of the communications in a multi-agent system (MAS) in which agents cooperate to maximize the averaged sum of discounted one-stage rewards of a collaborative task. Due to the bit-budgeted communications between the agents, each agent should efficiently represent its local observation and communicate an abstracted version of the observations to improve the collaborative task performance. We first show that this problem can be approximated as a form of data-quantization problem which we call task-oriented data compression (TODC). We then introduce the state-aggregation for information compression algorithm (SAIC) to solve the formulated TODC problem. It is shown that SAIC is able to achieve near-optimal performance in terms of the achieved sum of discounted rewards. The proposed algorithm is applied to a geometric consensus problem and its performance is compared with several benchmarks. Numerical experiments confirm the promise of this indirect design approach for task-oriented multi-agent communications.

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