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    <Esri>
        
        <CreaDate>20191114</CreaDate>
        
        <CreaTime>16403700</CreaTime>
        
        <ArcGISFormat>1.0</ArcGISFormat>
        
        <ArcGISstyle>FGDC CSDGM Metadata</ArcGISstyle>
        
        <SyncOnce>TRUE</SyncOnce>
        
    </Esri>
    
    <dataIdInfo>
        
        <idAbs>Data for prototype population density - Calculated by Population ward/datazone  divided by ward / datazone area (Square km) , then final figures given a 1 - 5 ranking using Natural Breaks (Jenks)  Classification. Data is then mathched to the MasterMap Building polygons that have been categorised by datazone. </idAbs>
        
        <searchKeys>
            
            <keyword>Population</keyword>
            
        </searchKeys>
        
        <idPurp>Data for prototype population density</idPurp>
        
        <idCredit/>
        
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