Paper
10 July 2009 The application of ESDA and GIS in analysis of regional rural economic
Wei-hua Liao
Author Affiliations +
Proceedings Volume 7491, PIAGENG 2009: Remote Sensing and Geoscience for Agricultural Engineering; 74910F (2009) https://doi.org/10.1117/12.836405
Event: International Conference on Photonics and Image in Agriculture Engineering (PIAGENG 2009), 2009, Zhangjiajie, China
Abstract
This paper introduced basic theory of global and local spatial autocorrelation analysis of Exploratory Spatial Data Analysis(ESDA), and analysis the application of ESDA method for regional rural economic. it is investigated the spatial dynamics of regional disparities at the county (city) level in Guangxi by analyzing rural per capita net income data in 2007, with the support spatial statistical analysis module of ArcGIS. Empirical results show that the overall county(city) level spatial disparities of rural per capita net income in Guangxi is great in 2007, and the global Moran'S I is 0.44051, which indicates that there are significant positive spatial autocorrelation. That is, the relatively high(1ow) developed county tends to be located nearby other high(1ow) developed counties more often than expected due to random chance. Local Moran's I scatterplot and LISA (Local Indicators of Spatial Association) cluster map have been used to test the local pattern of the Guangxi rural economic development.
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Wei-hua Liao "The application of ESDA and GIS in analysis of regional rural economic", Proc. SPIE 7491, PIAGENG 2009: Remote Sensing and Geoscience for Agricultural Engineering, 74910F (10 July 2009); https://doi.org/10.1117/12.836405
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KEYWORDS
Statistical analysis

Geographic information systems

Nanoimprint lithography

Analytical research

Image processing

Agriculture

Data analysis

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