School of Computer Science and Technology, Zhejiang University of Technology, Hangzhou 310023, China.
Comput Math Methods Med. 2013;2013:106867. doi: 10.1155/2013/106867. Epub 2013 Jun 18.
Feature is important for many applications in biomedical signal analysis and living system analysis. A fast discriminative stochastic neighbor embedding analysis (FDSNE) method for feature extraction is proposed in this paper by improving the existing DSNE method. The proposed algorithm adopts an alternative probability distribution model constructed based on its K-nearest neighbors from the interclass and intraclass samples. Furthermore, FDSNE is extended to nonlinear scenarios using the kernel trick and then kernel-based methods, that is, KFDSNE1 and KFDSNE2. FDSNE, KFDSNE1, and KFDSNE2 are evaluated in three aspects: visualization, recognition, and elapsed time. Experimental results on several datasets show that, compared with DSNE and MSNP, the proposed algorithm not only significantly enhances the computational efficiency but also obtains higher classification accuracy.
特征对于生物医学信号分析和生命系统分析中的许多应用都很重要。通过改进现有的 DSNE 方法,本文提出了一种用于特征提取的快速判别随机近邻嵌入分析(FDSNE)方法。所提出的算法采用基于类间和类内样本的 K-最近邻构建的替代概率分布模型。此外,通过核技巧和基于核的方法(即 KFDSNE1 和 KFDSNE2)将 FDSNE 扩展到非线性场景中。FDSNE、KFDSNE1 和 KFDSNE2 在可视化、识别和耗时三个方面进行了评估。在几个数据集上的实验结果表明,与 DSNE 和 MSNP 相比,所提出的算法不仅显著提高了计算效率,而且还获得了更高的分类精度。