Open-environment machine learning

Abstract Conventional machine learning studies generally assume close-environment scenarios where important factors of the learning process hold invariant. With the great success of machine learning, nowadays, more and more practical tasks, particularly those involving open-environment scenarios whe...

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Bibliographic Details
Published inNational science review Vol. 9; no. 8; p. nwac123
Main Author Zhou, Zhi-Hua
Format Journal Article
LanguageEnglish
Published China Oxford University Press 01.08.2022
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Summary:Abstract Conventional machine learning studies generally assume close-environment scenarios where important factors of the learning process hold invariant. With the great success of machine learning, nowadays, more and more practical tasks, particularly those involving open-environment scenarios where important factors are subject to change, called open-environment machine learning in this article, are present to the community. Evidently, it is a grand challenge for machine learning turning from close environment to open environment. It becomes even more challenging since, in various big data tasks, data are usually accumulated with time, like streams, while it is hard to train the machine learning model after collecting all data as in conventional studies. This article briefly introduces some advances in this line of research, focusing on techniques concerning emerging new classes, decremental/incremental features, changing data distributions and varied learning objectives, and discusses some theoretical issues. This article briefly introduces Open Environment Machine Learning, where important factors of the machine learning process are subject to change, as occurring in many practical tasks.
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ISSN:2095-5138
2053-714X
2053-714X
DOI:10.1093/nsr/nwac123