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Real-Time Stream Mining Electric Power Consumption Data Using Hoeffding Tree with Shadow Features

机译:利用带阴影特征的Hoeffding树实时流挖掘电力消耗数据

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Many energy load forecasting models have been established from batch-based supervised learning models where the whole data must be loaded to learn. Due to the sheer volumes of the accumulated consumption data which arrive in the form of continuous data streams, such batch-mode learning requires a very long time to rebuild the model. Incremental learning, on the other hand, is an alternative for online learning and prediction which learns the data stream in segments. However, it is known that its prediction performance falls short when compared to batch learning. In this paper, we propose a novel approach called Shadow Features (SF) which offer extra dimensions of information about the data streams. SF are relatively easy to compute, suitable for lightweight online stream mining.
机译:已经从基于批处理的监督学习模型建立了许多能量负荷预测模型,其中必须加载整个数据才能进行学习。由于以连续数据流的形式到达的累积消费数据量巨大,所以这种批处理模式学习需要很长时间才能重建模型。另一方面,增量学习是在线学习和预测的替代方法,它可以分段学习数据流。但是,众所周知,与批处理学习相比,其预测性能较差。在本文中,我们提出了一种称为“阴影功能(SF)”的新颖方法,该方法可提供有关数据流信息的额外维度。 SF相对容易计算,适用于轻量级在线流挖掘。

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