The term of Urban Data-Mining is defined to describe a methodological approach that discovers logical or mathematical and partly complex descriptions of urban patterns and regularities inside the data. The concept of data mining in connection with knowledge discovery techniques plays an important role for the empirical examination of high dimensional data in the field of urban research. The procedures on the basis of knowledge discovery systems are currently not exactly scrutinised for a meaningful integration into the regional and urban planning and development process. In this study ESOM is used to examine communities in Germany. The data deals with the question of dynamic processes (e.g. shrinking and growing of cities). In the future it might be possible to establish an instrument that defines objective criteria for the benchmark process about urban phenomena. The use of GIS supplements the process of knowledge conversion and communication.
[1]
Brian D. Ripley,et al.
Pattern Recognition and Neural Networks
,
1996
.
[2]
Jarkko Venna,et al.
Analysis and visualization of gene expression data using Self-Organizing Maps
,
2002,
Neural Networks.
[3]
Heikki Mannila,et al.
Principles of Data Mining
,
2001,
Undergraduate Topics in Computer Science.
[4]
Alfred Ultsch,et al.
Data Mining and Knowledge Discovery with Emergent Self-Organizing Feature Maps for Multivariate Time Series
,
1999
.
[5]
Teuvo Kohonen,et al.
Self-organized formation of topologically correct feature maps
,
2004,
Biological Cybernetics.
[6]
Alfred Ultsch.
U*C: Self-organized Clustering with Emergent Feature Maps
,
2005,
LWA.