Selectivity Estimation Scheme for Spatial Topological Predicate Using Multi-Dimensional Histogram

다차원 히스토그램을 이용한 공간 위상 술어의 선택도 추정 기법
  • Hae Young Bae

초록

Many commercial database systems maintain histograms to summarize the contents of relations and permit the efficient estimation of query result sizes and the access plan cost. In spatial database systems, most spatial query predicates are consisted of topological relationships between spatial objects, and it is very important to estimate the selectivity of those predicates for spatial query optimizer. In this paper, we propose a selectivity estimation scheme for spatial topological predicates based on the multi-dimensional histogram and the transformation scheme. Proposed scheme applies two-partition strategy on transformed object space to generate spatial histogram and estimates the selectivity of topological predicates based on the topological characteristics of the transformed space. Proposed scheme provides a way for estimating the selectivity without too much memory space usage and additional I/Os in most spatial query optimizers.

제목
Selectivity Estimation Scheme for Spatial Topological Predicate Using Multi-Dimensional Histogram
제목 (타언어)
다차원 히스토그램을 이용한 공간 위상 술어의 선택도 추정 기법
저자
Hae Young Bae
학회명
PDPTA'02