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Hoeffding Trees with Nmin Adaptation

机译:具有Nmin适应性的Hoeffding树

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摘要

Machine learning software accounts for a significant amount of energy consumed in data centers. These algorithms are usually optimized towards predictive performance, i.e. accuracy, and scalability. This is the case of data stream mining algorithms. Although these algorithms are adaptive to the incoming data, they have fixed parameters from the beginning of the execution. We have observed that having fixed parameters lead to unnecessary computations, thus making the algorithm energy inefficient. In this paper we present the nmin adaptation method for Hoeffding trees. This method adapts the value of the nmin parameter, which significantly affects the energy consumption of the algorithm. The method reduces unnecessary computations and memory accesses, thus reducing the energy, while the accuracy is only marginally affected. We experimentally compared VFDT (Very Fast Decision Tree, the first Hoeffding tree algorithm) and CVFDT (Concept-adapting VFDT) with the VFDT-nmin (VFDT with nmin adaptation). The results show that VFDT-nmin consumes up to 27% less energy than the standard VFDT, and up to 92% less energy than CVFDT, trading off a few percent of accuracy in a few datasets.
机译:机器学习软件占据了数据中心大量的能源消耗。这些算法通常针对预测性能(即准确性和可伸缩性)进行优化。数据流挖掘算法就是这种情况。尽管这些算法适用于传入的数据,但从执行开始就具有固定的参数。我们已经观察到,具有固定参数会导致不必要的计算,从而使算法能量效率低下。在本文中,我们提出了Hoeffding树的nmin自适应方法。此方法适应nmin参数的值,这会严重影响算法的能耗。该方法减少了不必要的计算和存储器访问,从而减少了能量,而准确性仅受到很小的影响。我们通过实验将VFDT(非常快的决策树,第一个Hoeffding树算法)和CVFDT(概念适应性VFDT)与VFDT-nmin(具有nmin适应性的VFDT)进行了比较。结果表明,VFDT-nmin的能耗比标准VFDT少27%,比CVFDT少92%,这在一些数据集中降低了百分之几的精度。

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