Complexity reduction for Gaussian process regression in spatio-temporal prediction
  • Bui, Dinh-Mao
  • Huynh-The, Thien
  • Lee, Sungyoung
  • Yoon, Yongik
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초록

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. © 2015 IEEE.

키워드

Bayesian learningCPU utilizationenergy efficiencyGaussian processProactive predictionDigital storageEnergy efficiencyForecastingGaussian noise (electronic)Bayesian learningComplexity reductionCPU utilizationGaussian process regressionGaussian ProcessesMigration mechanismsSpatio-temporal predictionSupervised learning approachesGaussian distribution
제목
Complexity reduction for Gaussian process regression in spatio-temporal prediction
저자
Bui, Dinh-MaoHuynh-The, Thien Lee, SungyoungYoon, Yongik
DOI
10.1109/ATC.2015.7388344
발행일
2015-10
유형
Conference Paper
저널명
International Conference on Advanced Technologies for Communications
2016-January
페이지
326 ~ 331