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PSForest Improving Deep Forest via Feature Pooling and Error Screening

机译:PSForest通过功能池和错误筛选改善了深林

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In recent years, most of the research on deep learning is based on deep neural networks, which uses the backpropagation algorithm to train parameters of nonlinear layers. Recently, a non-NN style deep model called Deep Forest or gcForest was proposed by Zhou and Feng, which is a deep learning model based on random forests and the training process does not rely on backpropagation. In this paper, we propose PSForest, which can be regarded as a modification of the standard Deep Forest. The main idea for improving the efficiency and performance of the Deep Forest is to do multi-grained pooling of raw features and screening the class vector of each layer based on out-of-bag error. The experiment on different datasets shows that our proposed model achieves predictive accuracy comparable to or better than gcForest, with lower memory requirement and smaller time cost. The study significantly improves the competitiveness of deep forests, further demonstrating that deep learning is more than just deep neural networks.
机译:近年来,大多数关于深度学习的研究都基于深度神经网络,它利用反向验证算法来训练非线性层的参数。最近,周和冯提出了一种称为深森林或GCCOREST的非NN风格的深层模型,这是基于随机森林的深层学习模型,培训过程不依赖于反向化。在本文中,我们提出了PSForest,可以被视为标准深林的修改。提高深森林效率和性能的主要思想是根据袋出误差进行原始特征的多粒度汇集,并筛选每层的类矢量。在不同数据集上的实验表明,我们的建议模型实现了与GClest相当或更好的预测精度,内存要求较低,时间成本较小。该研究显着提高了深林的竞争力,进一步证明了深度学习不仅仅是深度神经网络。

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