This paper propose a novel methodology to estimate the distribution dynamics of income in presence of spatial dependence by representing spatial dynamics as a random vector field in Moran space. Inference on the local spatial dynamics is discussed, including a test on the presence of local spatial dependence. The methodology also allows to compute a forecast of future income distribution which includes also the effects of spatial dependence. An application to US States is used to illustrate the effective capacities of the methodology.

Local Directional Moran Scatter Plot

FIASCHI, DAVIDE;GIANMOENA, LISA;PARENTI, ANGELA
2014-01-01

Abstract

This paper propose a novel methodology to estimate the distribution dynamics of income in presence of spatial dependence by representing spatial dynamics as a random vector field in Moran space. Inference on the local spatial dynamics is discussed, including a test on the presence of local spatial dependence. The methodology also allows to compute a forecast of future income distribution which includes also the effects of spatial dependence. An application to US States is used to illustrate the effective capacities of the methodology.
2014
Fiaschi, Davide; Gianmoena, Lisa; Parenti, Angela
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11568/767415
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