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Coherent quality management for big data systems: a dynamic approach for stochastic time consistency

机译:大数据系统的相干质量管理:随机时间一致性的动态方法

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摘要

Big data systems for reinforcement learning have often exhibited problems (e.g., failures or errors) when their components involve stochastic nature with the continuous control actions of reliability and quality. The complexity of big data systems and their stochastic features raise the challenge of uncertainty. This article proposes a dynamic coherent quality measure focusing on an axiomatic framework by characterizing the probability of critical errors that can be used to evaluate if the conveyed information of big data interacts efficiently with the integrated system (i.e., system of systems) to achieve desired performance. Herein, we consider two new measures that compute the higher-than-expected error,that is, the tail error and its conditional expectation of the excessive error (conditional tail error)as a quality measure of a big data system. We illustrate several properties (that suffice stochastic time-invariance) of the proposed dynamic coherent quality measure for a big data system. We apply the proposed measures in an empirical study with three wavelet-based big data systems in monitoring and forecasting electricity demand to conduct the reliability and quality management in terms of minimizing decision-making errors. Performance of using our approach in the assessment illustrates its superiority and confirms the efficiency and robustness of the proposed method.
机译:当它们的组件涉及随机性的可靠性和质量的连续控制动作时,钢筋学习的大数据系统通常呈现出问题(例如,故障或错误)。大数据系统及其随机特征的复杂性提高了不确定性的挑战。本文提出了一种动态的相干质量测量,它通过表征可用于评估大数据的传达信息与集成系统(即系统系统)有效地相互作用的关键误差的概率来提出关联框架,以实现所需的性能。在此,我们考虑两种计​​算出高于预期的误差的新措施,即尾部误差及其条件期望过度误差(条件尾部误差)作为大数据系统的质量测量。我们说明了大数据系统所提出的动态相干质量测量的几个属性(其随机时间不变性)。我们在监测和预测电力需求中采用三个基于小波的大数据系统的实证研究中的拟议措施,以实现最小化决策错误的可靠性和质量管理。在评估中使用我们的方法的性能说明了其优越性,并确认了所提出的方法的效率和鲁棒性。

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