会议专题

Comparisons with Spatial Autocorrelation and Spatial Association Rule Mining

Spatial autocorrelation is a very general statistical property of economic variables, it indicates correlation of a variable with itself through space. Spatial association rule mining, discovery of interesting, meaningful rules in spatial databases,ignores qutocorrelation of the spatial data,or just generalizes the spatial data into attribute data currently. In order to compare the results between spatial autocorrelation and spatial association rule mining ,in this paper, the spatial association rules were mined by Apriori algorithm and its development algorithm. Then, Spatial autocorrelation analysis and spatial regression analysis were implemented on the same spatial data set. The experimental data is about the county-level revenue and population,education state, health state and social security state in China from 2000 to 2005.The results of the spatial association rules mining proves that economic level such as per capita revenue and social security have stronger correlation. The result of spatial autocorrelation is that from 2000 to2005,nationalcounty-level per capita revenue, education, health and social security present positive spatial correlation.There is littleinterannual change in the spatial distribution of per capita revenue, and low economic level applies to almost all counties all over the nation. Education,the situation that low value areas are surrounede by high value areas universally exists, which showsthat little significant positive influence from high level areas is exerted on low level areas. Atthe sametime,the interprovincial education,health and social security present positive spatial correlation. There is little interannual change in the spatial distribution of per capita revenue, and low economic level applies to almost all counties all over the nation.Education,the situation that low value areas are surrounded by high value areas universally exists, which shows that little significant positive influence from high level areas is exerted on low level areas. At the same time, the interprovincial education gap is gradually increasing. Health, in the year 2000 to 2005,there is a growing aggregation trend in Chinascounty-level health spatial pattern,and there are more low value areas in health. Social security, in the research years, the aggregation trend is gradually decreasing. While spatial heterogeneity is increasing.

spatial autocorrelation spatial association rule mining spatial data mining Apriori spatial regression

Jiangping Chen Yanan Chen Jie Yu Zhaohui Yang

School of Remote Sensing and Information Engineering,Wuhan University 129 Luoyu Road,Wuhan,China,430079

国际会议

2011 IEEE International Conference on Spatial Data Mining and Geographical Knowledge Services(第一届空间数据挖掘与地理知识服务国际学术会议 ICSDM 2011)

福州

英文

32-37

2011-06-29(万方平台首次上网日期,不代表论文的发表时间)