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Meta-Learning for Periodic Algorithm Selection in Time-Changing Data

机译:元学习用于时变数据中的周期性算法选择

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摘要

When users have to choose a learning algorithm to induce a model for a given dataset, a common practice is to select an algorithm whose bias suits the data distribution. In real-world applications that produce data continuously this distribution may change over time. Thus, a learning algorithm with the adequate bias for a dataset may become unsuitable for new data following a different distribution. In this paper we present a meta-learning approach for periodic algorithm selection when data distribution may change over time. This approach exploits the knowledge obtained from the induction of models for different data chunks to improve the general predictive performance. It periodically applies a meta-classifier to predict the most appropriate learning algorithm for new unlabeled data. Characteristics extracted from past and incoming data, together with the predictive performance from different models, constitute the meta-data, which is used to induce this meta-classifier. Experimental results using data of a travel time prediction problem show its ability to improve the general performance of the learning system. The proposed approach can be applied to other time-changing tasks, since it is domain independent.
机译:当用户必须选择学习算法为给定的数据集生成模型时,通常的做法是选择一种偏差适合数据分布的算法。在不断产生数据的实际应用中,这种分布可能会随着时间而改变。因此,对于数据集具有足够偏差的学习算法可能变得不适合遵循不同分布的新数据。在本文中,当数据分布可能随时间变化时,我们提出了一种用于定期算法选择的元学习方法。这种方法利用了从针对不同数据块的模型归纳中获得的知识,以改善总体预测性能。它定期应用元分类器来预测最适合新的未标记数据的学习算法。从过去和传入数据中提取的特征,再加上来自不同模型的预测性能,构成了元数据,用于导出此元分类器。使用旅行时间预测问题的数据进行的实验结果表明,它具有改善学习系统总体性能的能力。所提出的方法可以应用于其他时变任务,因为它与领域无关。

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