Deep learning models operating in the complex domain are used due to their rich representation capacity. However, most of these models are either restricted to the first quadrant of the complex plane or project the complex-valued data into the real domain, causing a loss of information. This paper proposes that operating entirely in the complex domain increases the overall performance of complex-valued models. A novel, fully complex-valued learning scheme is proposed to train a Fully Complex-valued Convolutional Neural Network (FC-CNN) using a newly proposed complex-valued loss function and training strategy. Benchmarked on CIFAR-10, SVHN, and CIFAR-100, FC-CNN has a 4-10% gain compared to its real-valued counterpart, maintaining the model complexity. With fewer parameters, it achieves comparable performance to state-of-the-art complex-valued models on CIFAR-10 and SVHN. For the CIFAR-100 dataset, it achieves state-of-the-art performance with 25% fewer parameters. FC-CNN shows better training efficiency and much faster convergence than all the other models.
翻译:在复杂领域运作的深层学习模式之所以被使用,是因为其具有丰富的代表性能力;然而,这些模式大多要么局限于复杂平面的第一象限,要么将复杂价值数据投放到实际领域,从而造成信息损失;本文件建议完全在复杂领域运作可提高复杂价值模型的总体性能;提出一个全新的、完全复杂价值的学习计划,利用新提议的复杂价值损失功能和培训战略,培训全复杂价值神经网络(FC-CNN);根据CIFAR-10、SVHN和CIFAR-100基准,FC-CNN与实际价值的对应方相比有4-10%的收益,保持模型的复杂性;由于参数较少,其业绩与CFAR-10和SVHN的最新复杂价值模型相当;对于CIFAR-100数据集,它以25%的参数达到最新水平业绩。 FC-CNN显示培训效率更高,比所有其他模型更快。