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Multiple Kernel Learning with Hierarchical Feature Representations

机译:具有分层特征表示的多个内核学习

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In this paper, we suggest multiple kernel learning with hierarchical feature representations. Recently, deep learning represents excellent performance to extract hierarchical feature representations in unsupervised manner. However, since fine-tuning step of deep learning only considers global level of features for classification problems, it makes each layers hierarchical features intractable. Therefore, we propose a method to employ the combined multiple levels of pre-trained features via Multiple Kernel Learning (MKL). MKL is lately proposed optimization problem in classification and is applied to various machine learning problems. MKL automatically finds the best combination of kernels. By applying multiple kernel learning to hierarchical features pre-trained by deep learning, we obtain the optimal combinations of multiple levels of features for the classification task. Also, MKL is applied to analyze the contribution of each layer of features for classification by obtained weight of each kernel.
机译:在本文中,我们建议使用分层特征表示的多个内核学习。最近,深度学习代表了优异的性能,以不监督的方式提取分层特征表示。但是,由于深度学习的微调步骤仅考虑对分类问题的全球特征级别,因此它使每个层分层功能难以解答。因此,我们提出了一种通过多个内核学习(MKL)采用多级预先训练特征的方法。 MKL在分类中最近提出了优化问题,并应用于各种机器学习问题。 MKL自动找到内核的最佳组合。通过将多个内核学习应用于深入学习预先训练的分层功能,我们获得了对分类任务的多个功能的最佳组合。此外,通过获得每个内核的重量,应用MKL以分析每层特征层对分类的贡献。

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