Uncertainty of spatial data in GIS can be in the aspect of position
attribute
temporary
logical relationship and completeness. Among them
attribute uncertainty can directly affect the quality of GIS-based decision making. In this paper
the concept and propagation of the attribute uncertainty are firstly described. Then the relationship between the attribute and position uncertainties is analyzed. Moreover
the theories and methods to study and visualize the attribute uncertainty are discussed. Attribute uncertainty of spatial describes the difference between the observed values of an entity attribute with their true values in spatial and temporal space. There are a number of theories and developed methods to deal with attribute uncertainties. These may include
for example
(1) object-and filed-based model; (2) probability theory
evidence theory
spatial statistics
"S" band model and probability vector which deal with random attribute uncertainties
while fuzzy set
rough set
genetic algorithms which deal with imprecise attribute uncertainties. Cloud theory can be used to deal with both randomness and fuzziness of attribute uncertainty. The relationship betweenxandμ(x)
fuzzy set is one to one
rough set is one to a region
and cloud theory is on one to a piece of cloud; (4) Visualization of attribute uncertainty which is based on Bertin geographical parameters and their extensions. Three-dimensional visualization and virtual reality are also helpful. Finally
the future research issues on attribute uncertainty are given.