Title :
Rapid Training for Self-Organizing Neural Networks with Incremental
Author :
Cheng, Guojian ; Liu, Tianshi ; Wang, Xiaoxiao ; Huang, Quanzhou
Author_Institution :
Sch. of Comput. Sci., Xi´´an Shiyou Univ.
Abstract :
Kohonen´s self-organizing maps (KSOM) can generate mappings from high-dimensional pattern spaces to lower dimensional topological structures. The main features of this kind of mappings are the formation of topology preserving maps. To overcome some limitations of KSOM, self-organizing neural networks with incremental learning (SONNIL) can be used. SONNIL can change their topological structures during learning. Two kinds of SONNIL model were present by B. Fritzke, i.e., growing cell structures (GCS) and growing neural gas (GNG). To speed up the training for SONNIL, based on GCS and GNG, we present two SONNIL variants, multiple GCS and double GNG. This paper first gives an introduction to KSOM and neural gas networks. Then, we discuss GCS and GNG models. Our multiple GCS and double GNG are present in the section 4. It is ended with some testing comparison and conclusions
Keywords :
learning (artificial intelligence); self-organising feature maps; Kohonen self-organizing map; growing cell structure model; growing neural gas network; incremental learning; self-organizing neural network; topological structure; topology preserving map; Artificial neural networks; Clustering algorithms; Computer networks; Computer science; Network topology; Neural networks; Neurons; Next generation networking; Self organizing feature maps; Testing;
Conference_Titel :
Intelligent Systems Design and Applications, 2006. ISDA '06. Sixth International Conference on
Conference_Location :
Jinan
Print_ISBN :
0-7695-2528-8
DOI :
10.1109/ISDA.2006.222