The Supervised Network Self-Organizing Map for Classification of Large Data Sets

被引:0
|
作者
Stergios Papadimitriou
Seferina Mavroudi
Liviu Vladutu
G. Pavlides
Anastasios Bezerianos
机构
[1] University of Patras,Department of Medical Physics, School of Medicine
[2] University of Patras,Department of Computer Engineering and Informatics
来源
Applied Intelligence | 2002年 / 16卷
关键词
neural networks; data mining; self-organizing maps; learning vector quantization; divide and conquer algorithms; radial basis functions; support vector machines; computational complexity; ischemia detection;
D O I
暂无
中图分类号
学科分类号
摘要
Complex application domains involve difficult pattern classification problems. The state space of these problems consists of regions that lie near class separation boundaries and require the construction of complex discriminants while for the rest regions the classification task is significantly simpler. The motivation for developing the Supervised Network Self-Organizing Map (SNet-SOM) model is to exploit this fact for designing computationally effective solutions. Specifically, the SNet-SOM utilizes unsupervised learning for classifying at the simple regions and supervised learning for the difficult ones in a two stage learning process. The unsupervised learning approach is based on the Self-Organizing Map (SOM) of Kohonen. The basic SOM is modified with a dynamic node insertion/deletion process controlled with an entropy based criterion that allows an adaptive extension of the SOM. This extension proceeds until the total number of training patterns that are mapped to neurons with high entropy (and therefore with ambiguous classification) reduces to a size manageable numerically with a capable supervised model. The second learning phase (the supervised training) has the objective of constructing better decision boundaries at the ambiguous regions. At this phase, a special supervised network is trained for the computationally reduced task of performing the classification at the ambiguous regions only. The performance of the SNet-SOM has been evaluated on both synthetic data and on an ischemia detection application with data extracted from the European ST-T database. In all cases, the utilization of SNet-SOM with supervised learning based on both Radial Basis Functions and Support Vector Machines has improved the results significantly related to those obtained with the unsupervised SOM and has enhanced the scalability of the supervised learning schemes. The highly disciplined design of the generalization performance of the Support Vector Machine allows to design the proper model for the particular training set.
引用
收藏
页码:185 / 203
页数:18
相关论文
共 50 条
  • [21] A self-organizing map for adaptive processing of structured data
    Hagenbuchner, M
    Sperduti, A
    Tsoi, AC
    IEEE TRANSACTIONS ON NEURAL NETWORKS, 2003, 14 (03): : 491 - 505
  • [22] Link of Data Synchronization to Self-Organizing Map Algorithm
    Miyano, Takaya
    Tsutsui, Takako
    IEICE TRANSACTIONS ON FUNDAMENTALS OF ELECTRONICS COMMUNICATIONS AND COMPUTER SCIENCES, 2009, E92A (01) : 263 - 269
  • [23] Interpreting Self-Organizing Map errors in the classification of ocean patterns
    Matic, Frano
    Kalinic, Hrvoje
    Vilibic, Ivica
    COMPUTERS & GEOSCIENCES, 2018, 119 : 9 - 17
  • [24] Self-organizing map approach for classification of mechanical and rotor faults on induction motors
    Bossio, Jose M.
    De Angelo, Cristian H.
    Bossio, Guillermo R.
    NEURAL COMPUTING & APPLICATIONS, 2013, 23 (01) : 41 - 51
  • [25] Self-organizing map approach for classification of mechanical and rotor faults on induction motors
    José M. Bossio
    Cristian H. De Angelo
    Guillermo R. Bossio
    Neural Computing and Applications, 2013, 23 : 41 - 51
  • [26] Clustering of the self-organizing map
    Vesanto, J
    Alhoniemi, E
    IEEE TRANSACTIONS ON NEURAL NETWORKS, 2000, 11 (03): : 586 - 600
  • [27] Robust classification with reject option using the self-organizing map
    Ricardo Gamelas Sousa
    Ajalmar R. Rocha Neto
    Jaime S. Cardoso
    Guilherme A. Barreto
    Neural Computing and Applications, 2015, 26 : 1603 - 1619
  • [28] FUZZY SELF-ORGANIZING MAP
    VUORIMAA, P
    FUZZY SETS AND SYSTEMS, 1994, 66 (02) : 223 - 231
  • [29] Geodesic self-organizing map
    Wu, YX
    Takatsuka, M
    Visualization and Data Analysis 2005, 2005, 5669 : 21 - 30
  • [30] Human Communication Network Based on the Classification Results of Personal Preferences by Using Self-Organizing Map
    Ichimura, Takumi
    Yamasaki, Azusa
    Hara, Akira
    Takahama, Tetsuyuki
    2009 IEEE INTERNATIONAL CONFERENCE ON SYSTEMS, MAN AND CYBERNETICS (SMC 2009), VOLS 1-9, 2009, : 418 - +