We present three novel algorithms for performing multi-dimensional joins and an in-depth survey and analysis of a low-dimensional spatial join. The first algo-rithm, the Iterative Spatial Join, performs a spatial join on low-dimensional data and is based on a plane-sweep technique. As we show analytically and experimentally, the Iterative Spatial Join performs well when internal memory is limited, compared to competing methods. This suggests that the Iterative Spatial Join would be useful for very large data sets or in situations where internal memory is a shared resource and is therefore limited, such as with today’s database engines which share internal memory amongst several queries. Furthermore, the performance of the Iterative Spatial ...
Most spatial join algorithms either assume the existence of a spatial index structure that is trave...
Spatial joins are one of the most important operations for combining spatial objects of several rela...
Spatial joins are one of the most important operations for combining spatial objects of several rela...
We present three novel algorithms for performing multi-dimensional joins and an in-depth survey and ...
grantor: University of TorontoSince the introduction of the relational model of data, the ...
grantor: University of TorontoSince the introduction of the relational model of data, the ...
Modern database applications including computer-aided design (CAD), medical imaging, molecular biolo...
We introduce a new algorithm to compute the spatial join of two or more spatial data sets, when inde...
Several techniques that compute the join between two spatial datasets have been proposed during the ...
Several techniques that compute the join between two spatial datasets have been proposed during the ...
Spatial databases are being used in an increasing number of application domains. Handling spatial jo...
Several techniques that compute the join between two spatial datasets have been proposed during the ...
The original publication is available at www.springerlink.comL. Arge, O. Procopiuc, S. Ramaswamy, T....
Abstract. The similarity join is an important database primitive which has been successfully applied...
Multidimensional similarity join finds pairs of multidimensional points that are within some small d...
Most spatial join algorithms either assume the existence of a spatial index structure that is trave...
Spatial joins are one of the most important operations for combining spatial objects of several rela...
Spatial joins are one of the most important operations for combining spatial objects of several rela...
We present three novel algorithms for performing multi-dimensional joins and an in-depth survey and ...
grantor: University of TorontoSince the introduction of the relational model of data, the ...
grantor: University of TorontoSince the introduction of the relational model of data, the ...
Modern database applications including computer-aided design (CAD), medical imaging, molecular biolo...
We introduce a new algorithm to compute the spatial join of two or more spatial data sets, when inde...
Several techniques that compute the join between two spatial datasets have been proposed during the ...
Several techniques that compute the join between two spatial datasets have been proposed during the ...
Spatial databases are being used in an increasing number of application domains. Handling spatial jo...
Several techniques that compute the join between two spatial datasets have been proposed during the ...
The original publication is available at www.springerlink.comL. Arge, O. Procopiuc, S. Ramaswamy, T....
Abstract. The similarity join is an important database primitive which has been successfully applied...
Multidimensional similarity join finds pairs of multidimensional points that are within some small d...
Most spatial join algorithms either assume the existence of a spatial index structure that is trave...
Spatial joins are one of the most important operations for combining spatial objects of several rela...
Spatial joins are one of the most important operations for combining spatial objects of several rela...