时空预测中高斯过程回归的复杂性降低

Dinh-Mao Bui, Thien Huynh-The, Sungyoung Lee, Yongik Yoon
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引用次数: 1

摘要

高斯过程以其鲁棒性和灵活性被认为是处理推理和推理问题的一个很有前途的工具。特别是在解决回归和分类问题时,高斯过程与贝叶斯学习的耦合在精度和可追溯性方面是最合适的监督学习方法之一。不幸的是,这种组合容忍了计算和数据存储的高复杂性。显然,这种限制使得高斯过程不适合处理需要快速响应时间的系统。本文的研究重点是分析高斯过程的性能问题,开发一种降低复杂度的方法并实现预测CPU利用率的方法,并将其作为预测计算节点状态的一个因素。随后,应用迁移机制,在CPU内核之间迁移系统级进程,并关闭空闲的进程,从而在保持性能的同时节省能源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Complexity reduction for Gaussian process regression in spatio-temporal prediction
To deal with inference and reasoning problems, Gaussian process has been considered as a promising tool due to the robustness and flexibility features. Especially, solving the regression and classification, Gaussian process coupling with Bayesian learning is one of the most appropriate supervised learning approaches in terms of accuracy and tractability. Unfortunately, this combination tolerates high complexity from computation and data storage. Obviously, this limitation makes Gaussian process ill-equipped to deal with the systems requiring fast response time. In this paper, the research focuses on analyzing the performance issue of Gaussian process, developing a method to reduce the complexity and implementing to predict CPU utilization, which is used as a factor to predict the status of computing node. Subsequently, a migration mechanism is applied so as to migrate the system-level processes between CPU cores and turn off the idle ones in order to save the energy while still maintaining the performance.
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