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Learning in dynamically changing domains: Theory revision and context dependence issues

机译:在动态变化的领域中学习:理论修订和上下文依赖问题

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摘要

Dealing with dynamical changing domains is a very important tepic in Machine Learning (ML) which has very interesting practical applications. Some attempts have already been made both in the statistical and machine learning communities to address some of the issues. In this paper we give a state of the art from the available literature in this area. We argue that a lot of further research is still needed, outline the directions that such research should go and describe the expected results. We argue also that most of the problems in this area can be solved only by interaction between the researches of both the statistical and ML-communities.
机译:在机器学习(ML)中,处理动态变化的领域是非常重要的话题,它具有非常有趣的实际应用。统计和机器学习社区已经进行了一些尝试来解决一些问题。在本文中,我们从该领域的现有文献中得出了最先进的技术。我们认为仍然需要进行大量进一步的研究,概述此类研究应走的方向并描述预期的结果。我们还认为,只有通过统计和机器学习社区的研究之间的相互作用,才能解决该领域的大多数问题。

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