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Parallel Learning:a Perspective and a Framework 被引量:36

Parallel Learning:a Perspective and a Framework
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摘要 The development of machine learning in complex system is hindered by two problems nowadays.The first problem is the inefficiency of exploration in state and action space,which leads to the data-hungry of some state-of-art data-driven algorithm.The second problem is the lack of a general theory which can be used to analyze and implement a complex learning system.In this paper,we proposed a general methods that can address both two issues.We combine the concepts of descriptive learning,predictive learning,and prescriptive learning into a uniform framework,so as to build a parallel system allowing learning system improved by self-boosting.Formulating a new perspective of data,knowledge and action,we provide a new methodology called parallel learning to design machine learning system for real-world problems. The development of machine learning in complex system is hindered by two problems nowadays.The first problem is the inefficiency of exploration in state and action space,which leads to the data-hungry of some state-of-art data-driven algorithm.The second problem is the lack of a general theory which can be used to analyze and implement a complex learning system.In this paper,we proposed a general methods that can address both two issues.We combine the concepts of descriptive learning,predictive learning,and prescriptive learning into a uniform framework,so as to build a parallel system allowing learning system improved by self-boosting.Formulating a new perspective of data,knowledge and action,we provide a new methodology called parallel learning to design machine learning system for real-world problems.
出处 《IEEE/CAA Journal of Automatica Sinica》 SCIE EI CSCD 2017年第3期389-395,共7页 自动化学报(英文版)
基金 supported in part by the National Natural Science Foundation of China(91520301)
关键词 Descriptive learning machine learning parallel learning parallel systems predictive learning prescriptive learning Descriptive learning machine learning parallel learning parallel systems predictive learning prescriptive learning
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