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Using Machine Learning and Big Data Analytics to Prioritize Outpatients in HetNets

机译:使用机器学习和大数据分析对HetNets中的门诊病人进行优先排序

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In this paper, we introduce machine learning approaches that are used to prioritize outpatients (OP) according to their current health state, resulting in self-optimizing heterogeneous networks (HetNet) that intelligently adapt according to users' needs. We use a naïve Bayesian classifier to analyze data acquired from OPs' medical records, alongside data from medical Internet of Things (IoT) sensors that provide the current state of the OP. We use this machine learning algorithm to calculate the likelihood of a life-threatening medical condition, in this case an imminent stroke. An OP is assigned high-powered resource blocks (RBs) according to the seriousness of their current health state, enabling them to remain connected and send their critical data to the designated medical facility with minimal delay. Using a mixed integer linear programming formulation (MILP), we present two approaches to optimizing the uplink side of a HetNet in terms of user-RB assignment: a Weighted Sum Rate Maximization (WSRMax) approach and a Proportional Fairness (PF) approach. Using these approaches, we illustrate the utility of the proposed system in terms of providing reliable connectivity to medical IoT sensors, enabling the OPs to maintain the quality and speed of their connection. Moreover, we demonstrate how system response can change according to alterations in the OPs' medical conditions.
机译:在本文中,我们介绍了机器学习方法,该方法用于根据门诊患者的当前健康状况对其进行优先级排序,从而产生能够根据用户需求智能地进行自适应调整的自优化异构网络(HetNet)。我们使用朴素的贝叶斯分类器来分析从OP的病历中获取的数据,以及来自提供OP当前状态的医疗物联网(IoT)传感器的数据。我们使用这种机器学习算法来计算威胁生命的医疗状况(在这种情况下为即将来临的中风)的可能性。根据当前操作状态的严重性,为OP分配高功率资源块(RB),使它们保持连接状态,并以最小的延迟将其关键数据发送到指定的医疗机构。使用混合整数线性规划公式(MILP),我们提出了两种在用户RB分配方面优化HetNet上行链路侧的方法:加权总和速率最大化(WSRMax)方法和比例公平(PF)方法。使用这些方法,我们从提供与医疗物联网传感器的可靠连接性,使OP保持其连接质量和速度的角度,说明了所提出系统的实用性。此外,我们演示了系统响应如何根据OP的医疗条件变化而变化。

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