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Forests of Randomized Shapelet Trees

机译:异形树的森林

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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:由于小形函数能够捕获相位独立和局部信息,因此最近提出了用于数据系列分类的小形函数。已经表明,基于shapelet的决策树不仅可以提供可解释的模型,而且在许多情况下还可以提供最新的预测性能。但是,Shapelet发现的计算量很大,尽管已经提出了几种加速此任务的技术,但在许多情况下,计算量仍然过高。在这项工作中,基于随机森林算法的成功,提出了一种基于集合的方法,称为随机小波森林(RSF),与原始的小波树学习相比,该方法具有较低的计算复杂度算法。广泛的经验研究表明,该算法可提供竞争性的预测性能,并且可以使用一种建议的重要度得分计算方法来成功识别有影响力的区域。

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