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Speeding up the SUCCESS Approach for Massive Industrial Datasets

机译:加快针对海量工业数据集的SUCCESS方法

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In many applications, it may be expensive, difficult or even impossible to obtain class labels for a large amount of the instances, therefore, the labeled data may not be representative. Semi-supervised learning aims to alleviate this problem by using both labeled and unlabeled data. Recently, we introduced the SUCCESS approach for semi-supervised classification of time series. Although SUCCESS achieved promising results, its ability to classify massive, industrial datasets has not been studied yet. In this paper, we aim to fill this gap: we propose a simple but effective method to speed up SUCCESS without loss of its accuracy. We evaluate the resulting approach on the classification of both publicly available and industrial datasets. Hence, we expect the increase of interest in the algorithm both in industry and the research community.
机译:在许多应用中,获取大量实例的类标签可能很昂贵,困难甚至无法实现,因此,所标记的数据可能无法代表。半监督学习旨在通过使用标记和未标记的数据来缓解此问题。最近,我们为时间序列的半监督分类引入了SUCCESS方法。尽管SUCCESS取得了可喜的结果,但尚未研究其对海量工业数据集进行分类的能力。在本文中,我们旨在填补这一空白:我们提出了一种简单而有效的方法来加速成功而又不损失其准确性。我们评估了可公开获得的数据集和工业数据集的分类方法。因此,我们期望业界和研究界对算法的兴趣都会增加。

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