Remote sensing and mobile devices nowadays collect a huge amount of spatial data which have to be analysed in order to discover interesting knowledge about economical, social and scientific problems. However, the presence of a spatial dimension adds some problems to data mining tasks. The geometrical representation and relative positioning of spatial objects implicitly define spatial relationships, whose efficient computation requires a tight integration of the data mining system with the spatial DBMS. The interactions between spatially close objects introduce different forms of autocorrelation whose effect should be considered to improve predictive accuracy of induced models and patterns. Units of analysis are typically composed of ...
Census data mining has great potential both in business development and in good public policy, but s...
The field of spatial data mining (Chawla, Shekhar, Wu & Ozesmi 2001), has been influenced by man...
Spatial data mining is a mining knowledge from large amounts of spatial data. Spatial data mining al...
Remote sensing and mobile devices nowadays collect a huge amount of spatial data, which have to be a...
The rapid growth in the amount of spatial data available in Geographical Information Systems has giv...
Spatial data mining is the quantitative study of phenomena that are located in space. This paper in...
Spatial data mining requires the analysis of the interactions in space. These interactions can be ma...
Geo-spatial data mining is a process to discover interesting and potentially useful spatial patterns...
Spatial classification is the task of learning models to predict class labels based on the features ...
Spatial data mining is a new and rapidly developing technique for analyzing geographical data. In t...
Almost any data can be referenced in geographic space. Such data permit advanced analyses that utili...
Voluminous geographic data have been, and continue to be, collected with modern data acquisition tec...
Spatial Data Mining (SDM) has great potential in supporting public policy and in underpinning societ...
Extracting meaningful patterns from large databases is a relevant task in several areas of geographi...
Abstract – In this article presenting the environment of spatial data mining and classifications of ...
Census data mining has great potential both in business development and in good public policy, but s...
The field of spatial data mining (Chawla, Shekhar, Wu & Ozesmi 2001), has been influenced by man...
Spatial data mining is a mining knowledge from large amounts of spatial data. Spatial data mining al...
Remote sensing and mobile devices nowadays collect a huge amount of spatial data, which have to be a...
The rapid growth in the amount of spatial data available in Geographical Information Systems has giv...
Spatial data mining is the quantitative study of phenomena that are located in space. This paper in...
Spatial data mining requires the analysis of the interactions in space. These interactions can be ma...
Geo-spatial data mining is a process to discover interesting and potentially useful spatial patterns...
Spatial classification is the task of learning models to predict class labels based on the features ...
Spatial data mining is a new and rapidly developing technique for analyzing geographical data. In t...
Almost any data can be referenced in geographic space. Such data permit advanced analyses that utili...
Voluminous geographic data have been, and continue to be, collected with modern data acquisition tec...
Spatial Data Mining (SDM) has great potential in supporting public policy and in underpinning societ...
Extracting meaningful patterns from large databases is a relevant task in several areas of geographi...
Abstract – In this article presenting the environment of spatial data mining and classifications of ...
Census data mining has great potential both in business development and in good public policy, but s...
The field of spatial data mining (Chawla, Shekhar, Wu & Ozesmi 2001), has been influenced by man...
Spatial data mining is a mining knowledge from large amounts of spatial data. Spatial data mining al...