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    <Esri>
        
        <CreaDate>20200207</CreaDate>
        
        <CreaTime>11342900</CreaTime>
        
        <ArcGISFormat>1.0</ArcGISFormat>
        
        <SyncOnce>TRUE</SyncOnce>
        
    </Esri>
    
    <dataIdInfo>
        
        <idAbs>Visited village locations with population estimates and village extents derived from the HRSL with modeled population estimates. The village estimates are from field villages (point feature class). The village modeled population (polygons) are visualized based on a simple linear model based on the relationship of population to village areas from the field visit data. A second estimate based on a Random Forest model to predict population based on biophysical covariates is included in the attributes of the village polygons. </idAbs>
        
        <searchKeys>
            
            <keyword>MARV</keyword>
            
            <keyword>   mangroves</keyword>
            
            <keyword>   villages</keyword>
            
            <keyword>   West Africa</keyword>
            
        </searchKeys>
        
        <idPurp>Visited village locations with population estimates and village extents derived from the HRSL with modeled population estimates. </idPurp>
        
        <idCredit>CIESIN, Columbia University</idCredit>
        
        <resConst>
            
            <Consts>
                
                <useLimit>Development data, population estimates are not yet reliable. </useLimit>
                
            </Consts>
            
        </resConst>
        
    </dataIdInfo>
    
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