Title :
The preliminary research on the multidimensional poor information spatial processing and measuring
Author :
Lin Dong ; Zhuowei Hu
Author_Institution :
Key Lab. of Resources Environ. & GIS, Capital Normal Univ., Beijing, China
Abstract :
Poverty is an important country to solve the livelihood problems. Poverty identification is mainly based on a single income standard. Sen´s poverty thinking that poverty is determined by a number of dimensions. Main source of data in the 2000 census in the years 1949-2005 Lan national economic statistics Lan county neighborhood population, the use of multidimensional poverty theory, using the inverse distance weighted interpolation(IDW), the Multidimensional poverty spatial processing of information, research Lan county River Township, East towns and counties, the Lan towns townships multidimensional Poverty level, the weighting factors of each dimension of poverty measurement considering the three dimensions of poverty, and poverty grading classification of thematic mapping. The result shows that: single income dimension of poverty and multidimensional analysis of the extent of poverty is different, and more accurately identify the extent of poverty of the multidimensional.
Keywords :
demography; econometrics; socio-economic effects; town and country planning; AD 1949 to 2005; East towns; Lan county neighborhood population; Lan national economic statistics; Lan towns townships multidimensional poverty level; Sen poverty thinking; inverse distance weighted interpolation; livelihood problems; multidimensional poor information spatial processing; multidimensional poverty spatial processing; multidimensional poverty theory; poverty extent; poverty grading classification; poverty identification; poverty measurement; research Lan county River Township; single income dimension; single income standard; thematic mapping; weighting factors; Cities and towns; Economics; Education; Interpolation; Sociology; Standards; Statistics; IDW interpolation; Measurement Poverty Level; Multidimensional Poverty; Spatialization;
Conference_Titel :
Geoinformatics (GEOINFORMATICS), 2013 21st International Conference on
Conference_Location :
Kaifeng
DOI :
10.1109/Geoinformatics.2013.6626042