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Boosting decision stumps for dynamic feature selection on data streams

机译:促进数据流上动态特征选择的决策树桩

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摘要

Feature selection targets the identification of which features of a dataset are relevant to the learning task. It is also widely known and used to improve computation times, reduce computation requirements, and to decrease the impact of the curse of dimensionality and enhancing the generalization rates of classifiers. In data streams, classifiers shall benefit from all the items above, but more importantly, from the fact that the relevant subset of features may drift over time. In this paper, we propose a novel dynamic feature selection method for data streams called Adaptive Boosting for Feature Selection (ABFS). ABFS chains decision stumps and drift detectors, and as a result, identifies which features are relevant to the learning task as the stream progresses with reasonable success. In addition to our proposed algorithm, we bring feature selection-specific metrics from batch learning to streaming scenarios. Next, we evaluate ABFS according to these metrics in both synthetic and real-world scenarios. As a result, ABFS improves the classification rates of different types of learners and eventually enhances computational resources usage. (C) 2019 Elsevier Ltd. All rights reserved.
机译:特征选择目标数据集的特征与学习任务相关。它也广为人知并用于改善计算时间,减少计算要求,并降低维度诅咒的影响,提高分类器的泛化率。在数据流中,分类器应从上面的所有项目中受益,但更重要的是,从相关的特征子集可能随着时间的推移而漂移。在本文中,我们提出了一种新的动态特征选择方法,用于特征选择的自适应提升的数据流(ABF)。 ABFS链决定树桩和漂移探测器,因此,确定哪些功能与学习任务相关,因为流具有合理的成功。除了我们所提出的算法外,我们还从批量学习中带来特定于特定的指标到流场景。接下来,我们根据合成和真实情景的这些指标评估ABF。因此,ABFS提高了不同类型的学习者的分类率,最终增强了计算资源的使用。 (c)2019 Elsevier Ltd.保留所有权利。

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