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Distance Metric Learning Using Graph Convolutional Networks: Application to Functional Brain Networks

机译:使用图卷积网络的距离度量学习:在功能性脑网络中的应用

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Evaluating similarity between graphs is of major importance in several computer vision and pattern recognition problems, where graph representations are often used to model objects or interactions between elements. The choice of a distance or similarity metric is, however, not trivial and can be highly dependent on the application at hand. In this work, we propose a novel metric learning method to evaluate distance between graphs that leverages the power of convolutional neural networks, while exploiting concepts from spectral graph theory to allow these operations on irregular graphs. We demonstrate the potential of our method in the field of connectomics, where neuronal pathways or functional connections between brain regions are commonly modelled as graphs. In this problem, the definition of an appropriate graph similarity function is critical to unveil patterns of disruptions associated with certain brain disorders. Experimental results on the ABIDE dataset show that our method can learn a graph similarity metric tailored for a clinical application, improving the performance of a simple k-nn classifier by 11.9% compared to a traditional distance metric.
机译:在几个计算机视觉和模式识别问题中,评估图形之间的相似性非常重要,在这些问题中,图形表示通常用于建模对象或元素之间的交互。但是,距离或相似性度量标准的选择并非易事,并且可能高度依赖于手头的应用程序。在这项工作中,我们提出了一种新颖的度量学习方法,该方法利用卷积神经网络的功能来评估图之间的距离,同时利用频谱图理论的概念来允许对不规则图进行这些操作。我们证明了我们的方法在连接学领域的潜力,其中神经元通路或大脑区域之间的功能连接通常被建模为图形。在此问题中,适当的图相似性函数的定义对于揭示与某些脑部疾病相关的破坏模式至关重要。在ABIDE数据集上的实验结果表明,我们的方法可以学习为临床应用量身定制的图形相似性度量,与传统的距离度量相比,将简单的k-nn分类器的性能提高了11.9%。

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