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MetaStream: A meta-learning based method for periodic algorithm selection in time-changing data

机译:MetaStream:一种基于元学习的方法,用于在时变数据中进行周期性算法选择

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摘要

Dynamic real-world applications that generate data continuously have introduced new challenges for the machine learning community, since the concepts to be learned are likely to change over time. In such scenarios, an appropriate model at a time point may rapidly become obsolete, requiring updating or replacement. As there are several learning algorithms available, choosing one whose bias suits the current data best is not a trivial task. In this paper, we present a meta-learning based method for periodic algorithm selection in time-changing environments, named MetaStream. It works by mapping the characteristics extracted from the past and incoming data to the performance of regression models in order to choose between single learning algorithms or their combination. Experimental results for two real regression problems showed that MetaStream is able to improve the general performance of the learning system compared to a baseline method and an ensemble-based approach.
机译:不断生成数据的动态现实世界应用程序为机器学习社区带来了新的挑战,因为要学习的概念可能会随着时间而改变。在这种情况下,某个时间点的合适模型可能会很快过时,需要进行更新或替换。由于有几种学习算法可用,因此选择一种最适合当前数据的偏差并不是一件容易的事。在本文中,我们提出了一种基于元学习的方法,用于在时变环境中进行周期性算法选择,称为MetaStream。它通过将从过去和传入数据中提取的特征映射到回归模型的性能来工作,以便在单个学习算法或其组合之间进行选择。针对两个实际回归问题的实验结果表明,与基线方法和基于集成的方法相比,MetaStream能够提高学习系统的总体性能。

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