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Deep Forest: Towards an Alternative to Deep Neural Networks

机译:深森林:走向深层神经网络的替代品

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In this paper, we propose gcForest, a decision tree ensemble approach with performance highly competitive to deep neural networks in a broad range of tasks. In contrast to deep neural networks which require great effort in hyper-parameter tuning, gcForest is much easier to train; even when it is applied to different data across different domains in our experiments, excellent performance can be achieved by almost same settings of hyper-parameters. The training process of gcForest is efficient, and users can control training cost according to computational resource available. The efficiency may be further enhanced because gcForest is naturally apt to parallel implementation. Furthermore, in contrast to deep neural networks which require largescale training data, gcForest can work well even when there are only small-scale training data.
机译:在本文中,我们提出了GCFlest,一个决策树集合方法,性能对广泛的任务中的深度神经网络具有高度竞争力。与在超参数调谐中需要巨大努力的深神经网络相比,GClest更容易训练;即使在我们的实验中应用于不同域的不同数据,也可以通过几乎相同的超参数设置来实现优异的性能。 GcForest的培训过程是高效的,用户可以根据可用的计算资源控制培训成本。可以进一步增强效率,因为GCForest自然地易于平行实现。此外,与需要大型训练数据的深神经网络相比,即使只有小规模训练数据,GClest也可以很好地工作。

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