期刊文献+

Semisupervised Sparse Multilinear Discriminant Analysis

Semisupervised Sparse Multilinear Discriminant Analysis
原文传递
导出
摘要 Various problems are encountered when adopting ordinary vector space algorithms for high-order tensor data input. Namely, one must overcome the Small Sample Size (SSS) and overfitting problems. In addition, the structural information of the original tensor signal is lost during the vectorization process. Therefore, comparable methods using a direct tensor input are more appropriate. In the case of electrocardiograms (ECGs), another problem must be overcome; the manual diagnosis of ECG data is expensive and time consuming, rendering it difficult to acquire data with diagnosis labels. However, when effective features for classification in the original data are very sparse, we propose a semisupervised sparse multilinear discriminant analysis (SSSMDA) method. This method uses the distribution of both the labeled and the unlabeled data together with labels discovered through a label propagation Mgorithm. In practice, we use 12-lead ECGs collected from a remote diagnosis system and apply a short-time-fourier transformation (STFT) to obtain third-order tensors. The experimental results highlight the sparsity of the ECG data and the ability of our method to extract sparse and effective features that can be used for classification. Various problems are encountered when adopting ordinary vector space algorithms for high-order tensor data input. Namely, one must overcome the Small Sample Size (SSS) and overfitting problems. In addition, the structural information of the original tensor signal is lost during the vectorization process. Therefore, comparable methods using a direct tensor input are more appropriate. In the case of electrocardiograms (ECGs), another problem must be overcome; the manual diagnosis of ECG data is expensive and time consuming, rendering it difficult to acquire data with diagnosis labels. However, when effective features for classification in the original data are very sparse, we propose a semisupervised sparse multilinear discriminant analysis (SSSMDA) method. This method uses the distribution of both the labeled and the unlabeled data together with labels discovered through a label propagation Mgorithm. In practice, we use 12-lead ECGs collected from a remote diagnosis system and apply a short-time-fourier transformation (STFT) to obtain third-order tensors. The experimental results highlight the sparsity of the ECG data and the ability of our method to extract sparse and effective features that can be used for classification.
作者 黄锴 张丽清
出处 《Journal of Computer Science & Technology》 SCIE EI CSCD 2014年第6期1058-1071,共14页 计算机科学技术学报(英文版)
基金 supported by the National Natural Science Foundation of China under Grant Nos.91120305,61272251 the National Basic Research 973 Program of China under Grant No.2015CB856004
关键词 ECG analysis semisupervised learning sparse coding dimension reduction tensor learning approach ECG analysis, semisupervised learning, sparse coding, dimension reduction, tensor learning approach
  • 相关文献

参考文献46

  • 1Sirovich L, Kirby M. Low-dimensional procedure for the char- acterization of human faces. Journal of the Optical Society of America A, 1987, 4(3): 519-524. 被引量:1
  • 2Kirby M, Sirovich L. Application of the Karhunen-Loeve pro- cedure for the characterization of human faces. IEEE Trans- actions on Pattern Analysis and Machine Intelligence, 1990, 12(1): 103-108. 被引量:1
  • 3Turk M, Pentland A. Eigenfaces for recognition.Journal of Cognitive Ncuroscience, 1991, 3(1): 71-86. 被引量:1
  • 4Hyvarinen A. Survey on independent component analysis. Neural Computing Surveys, 1999, 2:94-128. 被引量:1
  • 5Liu Q S, Lu H Q, Ma S D. Improving kernel Fisher discrimi- nant analysis for face recognition. IEEE Transactions on Cir- cuits and Systems for Video Technology, 2004, 14(1): 42-49. 被引量:1
  • 6Zhao Q B, Zhang L Q. ECG feature extraction and classifi- cation using wavelet transform and support vector machines. In Proc. International Conference on Neural Networks and Brain, October 2005, pp.1089-1092. 被引量:1
  • 7Jen K K, Hwang Y R. ECG feature extraction and classifica- tion using cepstrum and neural networks. Journal of Medical and Biological Engineering, 2008, 28(1): 31-37. 被引量:1
  • 8Pasolli E, Melgani F, Active learning methods for electrocar- diographic signal classification. IEEE Transactions on Infor- mation Technology in Biomedicine, 2010, 14(6): 1405-1416. 被引量:1
  • 9Zhang H, Zhang L Q. ECG analysis based on PCA and sup- port vector machines. In Proc. International Conference on Neural Networks and Brain, October 2005, pp.743-747. 被引量:1
  • 10Wu Y, Zhang L Q. ECG classification using ICA features and support vector machines. In Lecture Notes in Computer Science 7062, Lu B L, Zhang L Q, Kwok J T (eds.), 2011, Springer, pp.146-154. 被引量:1

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部