In sliced networks, the shared tenancy of slices requires adaptive admission control of data flows, based on measurements of network resources. In this paper, we investigate the design of measurement-based admission control schemes, deciding whether a new data flow can be admitted and in this case, on which slice. The objective is to devise a joint measurement and decision strategy that returns a correct decision (e.g., the least loaded slice) with a certain level of confidence while minimizing the measurement cost (the number of measurements made before committing to the decision). We study the design of such strategies for several natural admission criteria specifying what a correct decision is. For each of these criteria, using tools from best arm identification in bandits, we first derive an explicit information-theoretical lower bound on the cost of any algorithm returning the correct decision with fixed confidence. We then devise a joint measurement and decision strategy achieving this theoretical limit. We compare empirically the measurement costs of these strategies, and compare them both to the lower bounds as well as a naive measurement scheme. We find that our algorithm significantly outperforms the naive scheme (by a factor $2-8$).
翻译:在切片网络中,共享切片需要根据对网络资源的测量,对数据流动进行适应性接纳控制。在本文中,我们调查基于计量的接纳控制计划的设计,决定是否允许新的数据流动,以及在这种情况下,关于哪个切片。目的是设计一个联合衡量和决定战略,使正确的决定(例如,最小的片段)以某种程度的自信返回正确的决定(例如,最小的片段),同时尽量降低测量成本(在做出决定之前的测量数量)。我们研究为若干自然接纳标准设计这种战略,具体说明正确的决定是什么。对于其中每一项标准,我们首先利用强盗中最好的手臂识别工具,从任何以固定信心恢复正确决定的算法的成本中得出明确的信息理论下限。我们然后设计一个联合衡量和决定战略,实现这一理论限制。我们用经验比较这些战略的测量成本,并将它们与较低的界限和天真的测量计划进行比较。我们发现,我们的算法大大超出了天性计划(以2-8美元计)。