首页> 外文会议>Canadian conference on artificial intelligence >Deep Super Learner: A Deep Ensemble for Classification Problems
【24h】

Deep Super Learner: A Deep Ensemble for Classification Problems

机译:深度超级学习者:分类问题的深度集合

获取原文

摘要

Deep learning has become very popular for tasks such as predictive modeling and pattern recognition in handling big data. Deep learning is a powerful machine learning method that extracts lower level features and feeds them forward for the next layer to identify higher level features that improve performance. However, deep neural networks have drawbacks, which include many hyper-parameters and infinite architectures, opaqueness into results, and relatively slower convergence on smaller datasets. While traditional machine learning algorithms can address these drawbacks, they are not typically capable of the performance levels achieved by deep neural networks. To improve performance, ensemble methods are used to combine multiple base learners. Super learning is an ensemble that finds the optimal combination of diverse learning algorithms. This paper proposes deep super learning as an approach which achieves log loss and accuracy results competitive to deep neural networks while employing traditional machine learning algorithms in a hierarchical structure. The deep super learner is flexible, adaptable, and easy to train with good performance across different tasks using identical hyper-parameter values. Using traditional machine learning requires fewer hyper-parameters, allows transparency into results, and has relatively fast convergence on smaller datasets. Experimental results show that the deep super learner has superior performance compared to the individual base learners, single-layer ensembles, and in some cases deep neural networks. Performance of the deep super learner may further be improved with task-specific tuning.
机译:在处理大数据时,诸如预测建模和模式识别之类的任务中,深度学习已变得非常流行。深度学习是一种强大的机器学习方法,可提取较低级别的功能并将其转发给下一层,以识别可提高性能的较高级别的功能。但是,深度神经网络具有缺点,其中包括许多超参数和无限架构,对结果的不透明性以及在较小数据集上相对较慢的收敛性。尽管传统的机器学习算法可以解决这些缺点,但它们通常不具备深度神经网络所能达到的性能水平。为了提高性能,使用集成方法来组合多个基础学习者。超级学习是找到各种学习算法的最佳组合的合奏。本文提出了深度超级学习作为一种方法,该方法在分层结构中采用传统机器学习算法的同时,其日志损失和准确性结果均优于深度神经网络。深度超级学习器灵活,适应性强,易于训练,并且使用相同的超参数值可以很好地完成不同任务。使用传统的机器学习需要较少的超参数,允许透明的结果,并且在较小的数据集上具有相对较快的收敛性。实验结果表明,与单个基础学习器,单层集成以及某些情况下的深度神经网络相比,深度超级学习器具有更好的性能。深度超级学习者的性能可以通过特定于任务的调整来进一步提高。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号