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<CreaDate>20200713</CreaDate>
<CreaTime>16404100</CreaTime>
<ArcGISFormat>1.0</ArcGISFormat>
<SyncOnce>TRUE</SyncOnce>
<MapLyrSync>TRUE</MapLyrSync>
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<idCitation>
<resTitle>Coeficiente de Gini (Coeficiente)</resTitle>
</idCitation>
<idAbs>Toma valores entre 0 y 1, donde 0 indica que todos los individuos tienen el mismo ingreso y 1 indica que sólo un individuo tiene todo el ingreso. Dado que el Coeficiente de Gini es de fácil interpretación, es el indicador de desigualdad más utilizado. Permite conocer las condiciones de desigualdad de un país y compararlo con otros países. NOTA: los datos de 2006 y 2007 no se calculan por problemas de comparabillidad en las series de empleo y pobreza como resultado del cambio metodológico que implicó la transición de la Encuesta Continua de Hogares a la Gran Encuesta Integrada de Hogares. Fuente: DANE - Estadísticas Sociales
Fecha de consulta: 4 deAgosto 2015.
Observaciones: Sin información para Arauca, Casanare, Putumayo, San Andres y Providencia, Amazonas, Guainia, Guaviare, Vaupes, Vichada.</idAbs>
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<keyword>UNICEF</keyword>
<keyword>EQ SOCIAL</keyword>
<keyword>ESRI COLOMBIA</keyword>
<keyword>GOBIERNO</keyword>
<keyword>GINI</keyword>
</searchKeys>
<idPurp/>
<idCredit>SINFONIA, UNICEF, EQ SOCIAL, ESRI COLOMBIA, DANE - Marco Geoestadístico Nacional</idCredit>
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