判别分析,深度神经网络

Li Li, M. Doroslovački, M. Loew
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引用次数: 20

摘要

机器学习社区的一个共识是,获得数据的良好表示对于分类任务至关重要。但是,为表征学习建立一个明确的目标是一个悬而未决的问题,也是一个困难的问题。在本文中,我们提出了判别分析损失函数(DALF)用于深度神经网络(dnn)的表示学习。DALF的梯度明确地最小化类内方差(散点)和最大化类间方差。我们使用DALF来驱动dnn的训练,并将其称为判别分析深度神经网络(disandnn)。与其他基于线性判别分析(LDA)的代价函数相比,DALF通过避免特征分解和矩阵反演大大降低了计算代价。我们使用简单的数据集来说明DALF的几何意义,并将其与LDA进行比较,然后在儿童肺炎(胸部x射线图像)数据集上实验DALF驱动的残余学习网络(ResNets)。实验结果表明,DisAnDNNs在二值分类任务中达到了最先进的精度。特别是在小儿肺炎数据集中,我们的准确率达到96.63%,灵敏度为99.23%,特异性为92.30%,均优于发表该数据集的文献的结果。
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Discriminant Analysis Deep Neural Networks
One consensus in the machine learning community is that obtaining good representations of the data is crucial for the classification tasks. But establishing a clear objective for representation learning is an open question and difficult. In this paper, we propose the Discriminant Analysis Loss Function (DALF) for the representation learning in Deep Neural Networks (DNNs). The gradients of DALF explicitly minimize the within-class variances (scatter) and maximize the between-class variances. We use DALF to drive the training of DNNs and call them Discriminant Analysis Deep Neural Networks (DisAnDNNs). Compared to other Linear Discriminant Analysis (LDA)-based cost functions, the computational cost of DALF is drastically reduced by avoiding eigen-decomposition and matrix inversion. We used simple datasets to illustrate the geometric meaning of DALF and compared it with LDA, then experimented with DALF-driven Residual Learning Nets (ResNets) on the pediatric pneumonia (chest X-ray image) dataset. The experimental results show that the DisAnDNNs achieve state-of the-art accuracy in the binary classification task. Particularly, in the pediatric pneumonia dataset, we achieved the accuracy of 96.63%, with a sensitivity of 99.23% and a specificity of 92.30%, all of which are better than the results in the literature that published the dataset.
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