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CS-ARF: Compressed Adaptive Random Forests for Evolving Data Stream Classification

机译:CS-ARF:用于发展数据流分类的压缩自适应随机森林

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摘要

Ensemble-based methods are one of the most often used methods in the classification task that have been adapted to the stream setting because of their high learning performance achievement. For instance, Adaptive Random Forests (ARF) is a recent ensemble method for evolving data streams that proved to be of a good predictive performance but, as all ensemble methods, it suffers from a severe drawback related to the high computational demand which prevents it from being efficient and further exacerbates with high-dimensional data. In this context, the application of a dimensionality reduction technique is crucial while processing the Internet of Things (IoT) data stream with ultrahigh dimensionality. In this paper, we aim to alleviate this deficiency and improve ARF performance, so we introduce the CS-ARF approach that uses Compressed Sensing (CS) as an internal pre-processing task, to reduce the dimensionality of data before starting the learning process, that will potentially lead to a meaningful improvement in memory usage. Experiments on various datasets show the high classification performance of our CS-ARF approach compared against current state-of-the-art methods while reducing resource usage.
机译:基于集合的方法是分类任务中最常用的方法之一,由于它们具有很高的学习性能,因此已经适应了流设置。例如,自适应随机森林(ARF)是一种用于进化数据流的最新集成方法,该方法被证明具有良好的预测性能,但是,与所有集成方法一样,该方法还存在着与高计算需求相关的严重缺陷,这导致无法对其进行分析。高效,并进一步加剧高维数据。在这种情况下,降维技术的应用在处理超高维度的物联网(IoT)数据流时至关重要。在本文中,我们旨在减轻这种不足并提高ARF性能,因此,我们引入了CS-ARF方法,该方法使用压缩感知(CS)作为内部预处理任务,以在开始学习过程之前降低数据的维数,这将潜在地显着提高内存使用率。在各种数据集上进行的实验表明,与当前的最新方法相比,我们的CS-ARF方法具有较高的分类性能,同时减少了资源使用。

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