Department of Electrical, Electronics and Informatics Engineering, University of Catania, Italy.
Department of Mathematics and Computer Science, University of Catania, Italy.
Neural Netw. 2018 Dec;108:331-338. doi: 10.1016/j.neunet.2018.08.023. Epub 2018 Sep 8.
In this paper a novel training technique is proposed to offer an efficient solution for neural network training in non-trivial and critical applications such as the diagnosis of health threatening illness. The presented technique aims to enhance the generalization capability of a neural network while preserving its sensitivity and precision. The implemented method has been devised in order to slowly increase, during training, the generalization capabilities of a Radial Basis Probabilistic Neural Network classifier, as well as preventing it from over-generalization and the consequent lack of resulting classification performances. The developed method was tested on Electrocardiograms. These latter are generally considered non-trivial both due to the difficulty to recognize some anomalous heart activities, and due to the intermittent nature of abnormal beat occurrences. The implemented training method obtained satisfactory performances, sensitivity and precision while showing high generalization capabilities.
本文提出了一种新的训练技术,旨在为神经网络在非平凡和关键应用中的训练提供有效的解决方案,例如威胁生命的疾病的诊断。所提出的技术旨在提高神经网络的泛化能力,同时保持其敏感性和精度。该方法旨在在训练过程中缓慢提高径向基概率神经网络分类器的泛化能力,同时防止其过度泛化,从而导致分类性能下降。所开发的方法已在心电图上进行了测试。这些心电图通常被认为是复杂的,因为识别一些异常的心脏活动具有一定的难度,而且异常心跳的发生也具有间歇性。所实现的训练方法在表现出高泛化能力的同时,获得了令人满意的性能、敏感性和精度。