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Deep multi-view representation learning for multi-modal features of the schizophrenia and schizo-affective disorder

机译:深度多视图表示学习对精神分裂症和精神分裂症情感障碍的多模态特征

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This work is originated from the MLSP 2014 Classification Challenge which tries to automatically detect subjects with schizophrenia and schizo-affective disorder by analyzing multi-modal features derived from magnetic resonance imaging (MRI) data. We employ Deep Neural Network (DNN)-based multi-view representation learning for combining multimodal features. The DNN-based multi-view models include deep canonical correlation analysis (DCCA) and deep canon-ically correlated auto-encoders (DCCAE). In addition, support vector machine with Gaussian kernel is used to conduct classification with the compact bottleneck features learned by the deep multi-view models. Our experiments on the dataset provided by the MLSP Classification Challenge show that bottleneck features learned via deep multi-view models obtain better results than the trimming features used in the baseline system in terms of the receiver operating characteristic (ROC) area under the curve (AUC).
机译:这项工作源自MLSP 2014分类挑战,该挑战试图通过分析从磁共振成像(MRI)数据得出的多峰特征来自动检测患有精神分裂症和精神分裂症的受试者。我们采用基于深度神经网络(DNN)的多视图表示学习来结合多模式特征。基于DNN的多视图模型包括深度规范相关分析(DCCA)和深度规范相关自动编码器(DCCAE)。此外,使用具有高斯核的支持向量机进行分类,并利用深度多视图模型学习的紧凑瓶颈特征进行分类。我们对MLSP分类挑战提供的数据集进行的实验表明,就曲线下的接收器工作特性(ROC)面积而言,通过深度多视图模型学习的瓶颈特征比基线系统中使用的修整特征获得更好的结果。 )。

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