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Mining Resource Scheduling Protocols

机译:挖掘资源调度协议

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摘要

In service processes, as found in the telecommunications, financial, or healthcare sector, customers compete for the scarce capacity of service providers. For such processes, performance analysis is important and it often targets the time that customers are delayed prior to service. However, this wait time cannot be fully explained by the load imposed on service providers. Indeed, it also depends on resource scheduling protocols, which determine the order of activities that a service provider decides to follow when serving customers. This work focuses on automatically learning resource decisions from events. We hypothesize that queueing information serves as an essential element in mining such protocols and hence, we utilize the queueing perspective of customers in the mining process. We propose two types of mining techniques: advanced classification methods from data mining that include queueing information in their explanatory features and heuristics that originate in queueing theory. Empirical evaluation shows that incorporating the queueing perspective into mining of scheduling protocols improves predictive power.
机译:在电信,金融或医疗保健部门发现的服务过程中,客户争夺服务提供商的稀缺能力。对于此类流程,性能分析很重要,并且通常以客户延迟服务之前的时间为目标。但是,此等待时间不能完全由服务提供商承受的负担来解释。实际上,它还取决于资源调度协议,该协议确定服务提供商在为客户提供服务时决定遵循的活动顺序。这项工作的重点是从事件中自动学习资源决策。我们假设排队信息是挖掘此类协议的基本要素,因此,我们在挖掘过程中利用了客户的排队视角。我们提出两种类型的挖掘技术:数据挖掘的高级分类方法(包括其解释特征中的排队信息)和起源于排队论的启发式方法。实证评估表明,将排队观点纳入调度协议的挖掘可以提高预测能力。

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