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Unemployment rate","titleType":null}],"publisher":"RWI – Leibniz Institute for Economic Research","container":{"type":"DataRepository","title":"RWI-GEO-GRID"},"publicationYear":2015,"subjects":[{"lang":"de","subject":"Arbeitslosenquote","subjectScheme":""},{"lang":"de","subject":"Rasterdaten","subjectScheme":""}],"contributors":[],"dates":[{"date":"2005","dateType":"Collected","dateInformation":null},{"date":"2009","dateType":"Collected","dateInformation":null},{"date":"2010","dateType":"Collected","dateInformation":null},{"date":"2011","dateType":"Collected","dateInformation":null},{"date":"2012","dateType":"Collected","dateInformation":null},{"date":"2015","dateType":"Issued","dateInformation":null}],"language":"de","types":{"ris":"DATA","bibtex":"misc","citeproc":"dataset","schemaOrg":"Dataset","resourceTypeGeneral":"Dataset"},"relatedIdentifiers":[{"schemeUri":null,"schemeType":null,"relationType":"IsSupplementedBy","relatedIdentifier":"10.7807/microm:pkwmarken:v3","resourceTypeGeneral":null,"relatedIdentifierType":"DOI","relatedMetadataScheme":null},{"schemeUri":null,"schemeType":null,"relationType":"IsSupplementedBy","relatedIdentifier":"10.7807/microm:pkwseg:v3","resourceTypeGeneral":null,"relatedIdentifierType":"DOI","relatedMetadataScheme":null},{"schemeUri":null,"schemeType":null,"relationType":"IsSupplementedBy","relatedIdentifier":"10.7807/microm:kaufkraft:v3","resourceTypeGeneral":null,"relatedIdentifierType":"DOI","relatedMetadataScheme":null},{"schemeUri":null,"schemeType":null,"relationType":"IsSupplementedBy","relatedIdentifier":"10.7807/microm:haustyp:v3","resourceTypeGeneral":null,"relatedIdentifierType":"DOI","relatedMetadataScheme":null},{"schemeUri":null,"schemeType":null,"relationType":"IsSupplementedBy","relatedIdentifier":"10.7807/microm:auslaender:v3","resourceTypeGeneral":null,"relatedIdentifierType":"DOI","relatedMetadataScheme":null},{"schemeUri":null,"schemeType":null,"relationType":"IsSupplementedBy","relatedIdentifier":"10.7807/microm:hstruktur:v3","resourceTypeGeneral":null,"relatedIdentifierType":"DOI","relatedMetadataScheme":null},{"schemeUri":null,"schemeType":null,"relationType":"IsSupplementedBy","relatedIdentifier":"10.7807/microm:kinder:v3","resourceTypeGeneral":null,"relatedIdentifierType":"DOI","relatedMetadataScheme":null},{"schemeUri":null,"schemeType":null,"relationType":"IsSupplementedBy","relatedIdentifier":"10.7807/microm:einwohner:v3","resourceTypeGeneral":null,"relatedIdentifierType":"DOI","relatedMetadataScheme":null},{"schemeUri":null,"schemeType":null,"relationType":"IsSupplementedBy","relatedIdentifier":"10.7807/microm:einwgeal:v3","resourceTypeGeneral":null,"relatedIdentifierType":"DOI","relatedMetadataScheme":null},{"schemeUri":null,"schemeType":null,"relationType":"IsSupplementedBy","relatedIdentifier":"10.7807/microm:ethno:v3","resourceTypeGeneral":null,"relatedIdentifierType":"DOI","relatedMetadataScheme":null},{"schemeUri":null,"schemeType":null,"relationType":"IsSupplementedBy","relatedIdentifier":"10.7807/microm:zahlindex:v3","resourceTypeGeneral":null,"relatedIdentifierType":"DOI","relatedMetadataScheme":null},{"schemeUri":null,"schemeType":null,"relationType":"IsOriginalFormOf","relatedIdentifier":"10.7807/microm:alq:suf:v3","resourceTypeGeneral":null,"relatedIdentifierType":"DOI","relatedMetadataScheme":null},{"schemeUri":null,"schemeType":null,"relationType":"Continues","relatedIdentifier":"10.7807/microm:alq:v2","resourceTypeGeneral":null,"relatedIdentifierType":"DOI","relatedMetadataScheme":null},{"schemeUri":null,"schemeType":null,"relationType":"IsContinuedBy","relatedIdentifier":"10.7807/microm:alq:v4","resourceTypeGeneral":null,"relatedIdentifierType":"DOI","relatedMetadataScheme":null},{"schemeUri":null,"schemeType":null,"relationType":"IsDocumentedBy","relatedIdentifier":null,"resourceTypeGeneral":"Text","relatedIdentifierType":"DOI","relatedMetadataScheme":null}],"relatedItems":[],"sizes":[],"formats":[],"version":"1","rightsList":[{"lang":"de","rights":"microm Micromarketing-Systeme und Consult GmbH"},{"lang":"en","rights":"microm Micromarketing-Systeme und Consult GmbH"}],"descriptions":[{"lang":"de","description":"Die Arbeitslosenquote ist der Anteil der Arbeitslosen an der Gesamtzahl der zivilen Erwerbspersonen. Sie ist ein Indikator der Bundesagentur für Arbeit für die Arbeitsmarkt- und Beschäftigungslage (microm 2014, S. 100).","descriptionType":"Abstract"},{"lang":"de","description":"RWI-GEO-GRID","descriptionType":"SeriesInformation"},{"lang":"en","description":"RWI-GEO-GRID","descriptionType":"SeriesInformation"},{"lang":"de","description":"Microm verwendet schätzungsweise über eine Milliarde Einzelinformationen, die in den microm Datensatz einfließen. Die Grundlage für die Informationsgewinnung bilden im Wesentlichen Informationen über ca. 40,7 Millionen Haushalte in Deutschland. Die Daten werden jedoch nicht für die einzelnen Haushalte sondern für die rund 19,7 Millionen Häuser in Deutschland ausgewiesen (microm 2014, Seite 1). Aus datenschutzrechtlichen Gründen werden Häuser, die zu einem Wohnumfeld gehören, zu einem „virtuellen“ mikrogeografischen Segment (sog. Mikrozelle) gebündelt, das durchschnittlich acht, mindestens aber fünf Häuser umfasst. So werden aus den benutzten Grunddaten Informationen zu den Haushaltsstrukturen generiert, die dann wiederum in weitere Hochrechnungen einfließen. Wann immer dies möglich ist, werden die errechneten Daten mit anderen Datenquellen wie beispielsweise amtlichen Daten, die auf einer höheren Aggregationsstufe vorliegen, abgeglichen (microm 2014, Seite 2).\n Darüber hinaus nutzt microm die Möglichkeit seine Wohnumfelder zu geocodieren, das heißt, den Wohnfeldern werden Koordinaten zugewiesen. 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