SOME PROPERTIES OF SPATIAL QUANTILES

Authors

  • Grażyna Trzpiot University of Economics in Katowice, Department of Demography and Economics Statistics.

Keywords:

Multivariate quantile analysis, spatial quantiles, spatial quantiles estimators.

Abstract

Conditional quantiles are required in various economic, biomedical or industrial problems. Lack of objective basis for ordering multivariate observations is a major problem in extending the notion of quantiles or conditional quantiles (also called regression quantiles) in a multidimensional setting. We present characterisations of the spatial quantiles and the corresponding estimators. Nonparametric inference is very naturally quantile-based, and in recent years various notions of multivariate quantiles the spatial quantile function for whose sample version have been recalled.

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Published

2015-05-18

How to Cite

Trzpiot, G. (2015). SOME PROPERTIES OF SPATIAL QUANTILES. Acta Universitatis Lodziensis. Folia Oeconomica, 5(307). Retrieved from https://czasopisma.uni.lodz.pl/foe/article/view/299

Issue

Section

Regional econometrics

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