Spatial outlier detection has been a hot issue in the field of spatial data mining and knowledge discovery. Spatial outliers may be utilized to discover and predict the potential change laws or development tendency of geographical phenomenon in the real world. Among the existing spatial outlier detection methods
there are mainly two aspects of issues. On the one hand
these methods primarily consider that all the entities for outlier detection are correlated. Actually
spatial correlation decreases with the increase of distance. Entities will become independent with each other at a distance of rang. Thus
current methods can only discover the obviously outliers in the whole
some local outliers may not be detected. On the other hand
the spatial outlier measures are not enough robust
which are seriously influenced by the construction process of spatial neighborhoods of spatial entities and the possible outliers in spatial neighborhoods. To overcome these two limitations
spatial clustering as a means is firstly employed to extract the local autocorrelation patterns
called clusters. Then
a robust spatial outlier measure is proposed to determine spatial outliers in each cluster. This method is able to detect spatial outliers more accurately. Finally
a practical ex-ample is utilized to demonstrate the validity of the spatial outlier detection method proposed in this paper. The comparative experiment is also provided to further demonstrate the method in this paper to be superior to classic SOM method.
关键词
空间异常探测空间聚类空间异常度量空间数据挖掘
Keywords
spatial outlier detectionspatial clusteringspatial outlier measurespatial data mining