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DE-GCN: Differential Evolution as an optimization algorithm for Graph Convolutional Networks

机译:DE-GCN:差分演进作为图形卷积网络的优化算法

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Neural networks had impressive results in recent years. Although neural networks only performed using Euclidean data in past decades, many data-sets in the real world have graph structures. This gap led researchers to implement deep learning on graphs. The graph convolutional network (GCN) is one of the graph neural networks. We propose the differential evolutional optimization method as an optimizer for GCN instead of gradient-based methods in this work. Hence the differential evolution algorithm applies for graph convolutional network’s training and parameter optimization. The node classification task is a non-convex problem. Therefore DE algorithm is suitable for these kinds of complex problems. Implementing evolutionally algorithms on GCN and parameter optimization are explained and compared with traditional GCN. DE-GCN outperforms and improves the results by powerful local and global searches. It also decreases the training time.
机译:近年来神经网络令人印象深刻。 虽然只有在过去几十年中使用欧几里德数据执行的神经网络,但是现实世界中的许多数据集都有图形结构。 这种差距领导了研究人员在图表上实施深入学习。 图表卷积网络(GCN)是图形神经网络之一。 我们提出了差分进化优化方法作为GCN的优化器,而不是在这项工作中的基于梯度的方法。 因此,差分演进算法适用于图形卷积网络的培训和参数优化。 节点分类任务是非凸面问题。 因此,De算法适用于这些复杂问题。 解释并将在GCN和参数优化上实施进化算法,并与传统GCN进行比较。 DE-GCN优于强大的本地和全球搜索的结果。 它还减少了培训时间。

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