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Feature Analysis of Unsupervised Learning for Multi-task Classification Using Convolutional Neural Network

机译:基于卷积神经网络的多任务分类无监督学习特征分析

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This study analyzes the characteristics of unsupervised feature learning using a convolutional neural network (CNN) to investigate its efficiency for multi-task classification and compare it to supervised learning features. We keep the conventional CNN structure and introduce modifications into the convolutional auto-encoder design to accommodate a subsampling layer and make a fair comparison. Moreover, we introduce non-maximum suppression and dropout for a better feature extraction and to impose sparsity constraints. The experimental results indicate the effectiveness of our sparsity constraints. We also analyze the efficiency of unsupervised learning features using the t -SNE and variance ratio. The experimental results show that the feature representation obtained in unsupervised learning is more advantageous for multi-task learning than that obtained in supervised learning.
机译:这项研究使用卷积神经网络(CNN)分析了非监督特征学习的特征,以研究其在多任务分类中的效率,并将其与监督学习特征进行比较。我们保留了传统的CNN结构,并对卷积自动编码器设计进行了修改,以适应子采样层并进行合理的比较。此外,我们引入了非最大抑制和丢弃,以实现更好的特征提取并施加稀疏约束。实验结果表明我们稀疏约束的有效性。我们还使用t -SNE和方差比分析了无监督学习功能的效率。实验结果表明,在无监督学习中获得的特征表示比在有监督学习中获得的特征表示更有利于多任务学习。

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