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Forests of Randomized Shapelet Trees

机译:随机灌木树森林

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摘要

Shapelets have recently been proposed for data series classification, due to their ability to capture phase independent and local information. Decision trees based on shapelets have been shown to provide not only interpretable models, but also, in many cases, state-of-the-art predictive performance. Shapelet discovery is, however, computationally costly, and although several techniques for speeding up this task have been proposed, the computational cost is still in many cases prohibitive. In this work, an ensemble-based method, referred to as Random Shapelet Forest (RSF), is proposed, which builds on the success of the random forest algorithm, and which is shown to have a lower computational complexity than the original shapelet tree learning algorithm. An extensive empirical investigation shows that the algorithm provides competitive predictive performance and that a proposed way of calculating importance scores can be used to successfully identify influential regions.
机译:由于它们能够捕获相位独立和本地信息,最近已经提出了数据系列分类的形状。已经证明了基于Shapelets的决策树不仅提供可解释的模型,而且还提供了在许多情况下,最先进的预测性能。然而,翻领昂贵的发现是昂贵的,尽管已经提出了用于加速这项任务的几种技术,但计算成本仍然在许多情况下令人望而却步。在这项工作中,提出了一种基于组合的方法,称为随机Shoet Forest(RSF),它构成了随机森林算法的成功,并且显示了比原始Shoad树学习更低的计算复杂性算法。广泛的经验研究表明,该算法提供了竞争性的预测性能,并且可以使用一种计算重要评分的方式来成功识别有影响的区域。

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