School of Automation, Hangzhou Dianzi University, Zhejiang, 310018, China; Artificial Intelligence Institute, Hangzhou Dianzi University, Zhejiang, 310018, China.
School of Automation, Hangzhou Dianzi University, Zhejiang, 310018, China; Artificial Intelligence Institute, Hangzhou Dianzi University, Zhejiang, 310018, China; School of Electrical, Information and Media Engineering, University of Wuppertal, 42119 Wuppertal, Germany.
Neural Netw. 2019 Jul;115:11-22. doi: 10.1016/j.neunet.2019.03.004. Epub 2019 Mar 19.
One-class classification has been found attractive in many applications for its effectiveness in anomaly or outlier detection. Representative one-class classification algorithms include the one-class support vector machine (SVM), Naive Parzen density estimation, autoencoder (AE), etc. Recently, the one-class extreme learning machine (OC-ELM) has been developed for learning acceleration and performance enhancement. But existing one-class algorithms are generally less effective in complex and multi-class classifications. To alleviate the deficiency, a multilayer neural network based one-class classification with ELM (in short, as ML-OCELM) is developed in this paper. The stacked AEs are employed in ML-OCELM to exploit an effective feature representation for complex data. The effective kernel based learning framework is also investigated in the stacked AEs of ML-OCELM, leading to a multilayer kernel based OC-ELM (in short, as MK-OCELM). The MK-OCELM has advantages of less human-intervention parameters and good generalization performance. Experiments on 13 benchmark UCI classification datasets and a real application on urban acoustic classification (UAC) are carried out to show the superiority of the proposed ML-OCELM/MK-OCELM over the OC-ELM and several state-of-the-art algorithms.
单类分类因其在异常或离群点检测中的有效性而在许多应用中受到关注。代表性的单类分类算法包括单类支持向量机(SVM)、朴素 Parzen 密度估计、自编码器(AE)等。最近,为了提高学习效率和性能,开发了单类极限学习机(OC-ELM)。但是,现有的单类算法在复杂的多类分类中通常效果较差。为了缓解这一不足,本文提出了一种基于 ELM 的多层神经网络单类分类(简称 ML-OCELM)。ML-OCELM 中采用堆叠 AE 来挖掘复杂数据的有效特征表示。还研究了 ML-OCELM 堆叠 AE 中的有效核学习框架,从而得到了基于多层核的单类极限学习机(简称 MK-OCELM)。MK-OCELM 具有较少的人为干预参数和良好的泛化性能优势。在 13 个基准 UCI 分类数据集上进行了实验,并在城市声学分类(UAC)的实际应用中进行了实验,结果表明,所提出的 ML-OCELM/MK-OCELM 优于 OC-ELM 和几种最先进的算法。