IEEE Trans Cybern. 2019 Jun;49(6):2200-2214. doi: 10.1109/TCYB.2018.2821764. Epub 2018 Apr 13.
Electroencephalogram (EEG) signal identification based on intelligent models is an important means in epilepsy detection. In the recognition of epileptic EEG signals, traditional intelligent methods usually assume that the training dataset and testing dataset have the same distribution, and the data available for training are adequate. However, these two conditions cannot always be met in practice, which reduces the ability of the intelligent recognition model obtained in detecting epileptic EEG signals. To overcome this issue, an effective strategy is to introduce transfer learning in the construction of the intelligent models, where knowledge is learned from the related scenes (source domains) to enhance the performance of model trained in the current scene (target domain). Although transfer learning has been used in EEG signal identification, many existing transfer learning techniques are designed only for a specific intelligent model, which limit their applicability to other classical intelligent models. To extend the scope of application, the generalized hidden-mapping transductive learning method is proposed to realize transfer learning for several classical intelligent models, including feedforward neural networks, fuzzy systems, and kernelized linear models. These intelligent models can be trained effectively by the proposed method even though the data available are insufficient for model training, and the generalization abilities of the trained model is also enhanced by transductive learning. A number of experiments are carried out to demonstrate the effectiveness of the proposed method in epileptic EEG recognition. The results show that the method is highly competitive or superior to some existing state-of-the-art methods.
基于智能模型的脑电图(EEG)信号识别是癫痫检测的重要手段。在癫痫 EEG 信号的识别中,传统的智能方法通常假设训练数据集和测试数据集具有相同的分布,并且可用的训练数据充足。然而,在实践中,这两个条件并不总是能够满足,这降低了智能识别模型在检测癫痫 EEG 信号中的能力。为了克服这个问题,一种有效的策略是在智能模型的构建中引入迁移学习,从相关场景(源域)中学习知识,以增强在当前场景(目标域)中训练的模型的性能。虽然迁移学习已经被用于 EEG 信号识别,但许多现有的迁移学习技术仅针对特定的智能模型设计,这限制了它们在其他经典智能模型中的适用性。为了扩展应用范围,提出了广义隐映射传递学习方法,以实现包括前馈神经网络、模糊系统和核线性模型在内的几种经典智能模型的迁移学习。即使对于模型训练来说可用的数据不足,所提出的方法也可以有效地训练这些智能模型,并且通过传递学习还可以增强训练模型的泛化能力。进行了多项实验以验证所提出的方法在癫痫 EEG 识别中的有效性。结果表明,该方法在某些现有最先进的方法中具有高度竞争力或优越性。