Georeferenced user-generated datasets like those extracted from Twitter are increasingly gaining the interest of spatial analysts. Such datasets oftentimes reflect a wide array of real-world phenomena. However, each of these phenomena takes place at a certain spatial scale. Therefore, user-generated datasets are of multiscale nature. Such datasets cannot be properly dealt with using the most common analysis methods, because these are typically designed for single-scale datasets where all observations are expected to reflect one single phenomenon (e.g., crime incidents). In this paper, we focus on the popular local G statistics. We propose a modified scale-sensitive version of a local G statistic. Furthermore, our approach comprises an alter...
PolyU Library Call No.: [THS] LG51 .H577P LSGI 2015 Liuxv, 194 pages :illustrations (some color) ;30...
The spatial scan statistic method has been widely used for detecting disease clusters. Its results m...
This paper is based on the assumption that there may be scale effects at all levels of areal data an...
Spatial clustering plays a key role in exploratory geographical data analysis. It is important for i...
International audienceThe use by geographers of local indicators of spatial autocorrelation has spre...
Nguyen HL, Tsolak D, Karmann A, Knauff S, Kühne S. Efficient and Reliable Geocoding of German Twitte...
Ambient user-generated geo-information like that from geosocial media is collected using liberal, un...
Spatial autocorrelation may be defined as the relationship among values of a single variable that co...
It has been established that spatial clustering patterns are scale-dependent. However, scale is stil...
As technologies permitting both the creation and retrieval of data containing spatial information co...
Spatial autocorrelation statistics have a long-standing history being used by geographers to determi...
Most data mining projects in spatial economics start with an evaluation of a set of attribute variab...
With the increase in community-contributed data availability, citizens and analysts are interested i...
This dissertation concerns the properties and relationships of discernible geographical features or ...
Functions to calculate measures of spatial association, especially measures of spatial autocorrelati...
PolyU Library Call No.: [THS] LG51 .H577P LSGI 2015 Liuxv, 194 pages :illustrations (some color) ;30...
The spatial scan statistic method has been widely used for detecting disease clusters. Its results m...
This paper is based on the assumption that there may be scale effects at all levels of areal data an...
Spatial clustering plays a key role in exploratory geographical data analysis. It is important for i...
International audienceThe use by geographers of local indicators of spatial autocorrelation has spre...
Nguyen HL, Tsolak D, Karmann A, Knauff S, Kühne S. Efficient and Reliable Geocoding of German Twitte...
Ambient user-generated geo-information like that from geosocial media is collected using liberal, un...
Spatial autocorrelation may be defined as the relationship among values of a single variable that co...
It has been established that spatial clustering patterns are scale-dependent. However, scale is stil...
As technologies permitting both the creation and retrieval of data containing spatial information co...
Spatial autocorrelation statistics have a long-standing history being used by geographers to determi...
Most data mining projects in spatial economics start with an evaluation of a set of attribute variab...
With the increase in community-contributed data availability, citizens and analysts are interested i...
This dissertation concerns the properties and relationships of discernible geographical features or ...
Functions to calculate measures of spatial association, especially measures of spatial autocorrelati...
PolyU Library Call No.: [THS] LG51 .H577P LSGI 2015 Liuxv, 194 pages :illustrations (some color) ;30...
The spatial scan statistic method has been widely used for detecting disease clusters. Its results m...
This paper is based on the assumption that there may be scale effects at all levels of areal data an...