TY - GEN
T1 - Support Vector Visualization and Clustering Using Self-Organizing Map and Support Vector One-Class Classification
AU - Wu, Sitao
AU - Chow, Tommy W.S.
PY - 2003
Y1 - 2003
N2 - In this paper a new algorithm of Support Vector Visualization and Clustering (SVVC) based on Self-Organizing Map (SOM) and Support Vector One-Class Classification (SVOCC) is presented. Original SVOCC is to identify the support domain of input data. When it is used for clustering, the high computational complexity for identifying cluster gaps between any pair points makes it less likely to be used in large data sets. In addition, the identified clusters cannot be visually displayed in high dimensions larger than three. Self-Organizing Map (SOM) is a neural network approach, which can project high-dimensional data into usually 2-D grid while preserving topology of input data. By using the proposed SVVC algorithm, resulting map can visually display high-dimensional cluster shapes and corresponding clusters can be found. Outliers and cluster borders can be clearly identified on the map, which is better than other visualization and clustering methods on SOM. The computational complexity of SVVC is less than the method of directly clustering by SVOCC.
AB - In this paper a new algorithm of Support Vector Visualization and Clustering (SVVC) based on Self-Organizing Map (SOM) and Support Vector One-Class Classification (SVOCC) is presented. Original SVOCC is to identify the support domain of input data. When it is used for clustering, the high computational complexity for identifying cluster gaps between any pair points makes it less likely to be used in large data sets. In addition, the identified clusters cannot be visually displayed in high dimensions larger than three. Self-Organizing Map (SOM) is a neural network approach, which can project high-dimensional data into usually 2-D grid while preserving topology of input data. By using the proposed SVVC algorithm, resulting map can visually display high-dimensional cluster shapes and corresponding clusters can be found. Outliers and cluster borders can be clearly identified on the map, which is better than other visualization and clustering methods on SOM. The computational complexity of SVVC is less than the method of directly clustering by SVOCC.
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UR - https://www.scopus.com/record/pubmetrics.uri?eid=2-s2.0-0141461452&origin=recordpage
M3 - RGC 32 - Refereed conference paper (with host publication)
VL - 1
SP - 803
EP - 808
BT - Proceedings of the International Joint Conference on Neural Networks
T2 - International Joint Conference on Neural Networks 2003
Y2 - 20 July 2003 through 24 July 2003
ER -