Lithuania Purchasing Power, Socio-demographics & Area Boundaries
A Variety of Purchasing Power and Socio-demographic Data for PC 5-digit, Savivaldybés and 100 x 100 m in Lithuania
Here is an overview of sociodemographic and purchasing power data for Lithuania from our global data offering to bring your geomarketing, target group analyses and location analyses to the next level. Additionally, for Lithuania we also have the following area boundaries (vector boundaries, polygons) available: Seamless and full country coverage of the PC 5-digit, Savivaldybés and 100 x 100 m. Our globally consistent and comparable data allows you to draw comparisons between Lithuania and any other country in the world.
DATA Availability FOr Lithuania
Geographic level | |||
---|---|---|---|
Area level | grid | postal | admin |
Name | 100 x 100 m | PC 5-digit | Savivaldybés |
Number of areas | 16735 | 60 | |
Geometry | |||
Polygons | |||
Data / Variables | |||
Population | |||
Age bands | |||
Sex / Gender | |||
Households | |||
Unemployed | |||
Purchasing power | |||
Retail Spending | |||
Retail Turnover | |||
Retail Centrality | |||
Consumer Spending by Product Groups | |||
Education (country-specific) | |||
Marital status (country-specific) | |||
Consumer Styles | |||
Daytime Population | |||
Online-Shopping Affinity | |||
Socio Bundle Plus | |||
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COUNTRY AVAILABILITY
Europe | North America | South America | Asia | Oceania | Africa
DATA FORMATS
Text file (CSV/TSV) | KML | Access database (MDB) | Excel (xls) | Esri Shapefile (.shp) | Esri Geodatabase (.gdb) | MapInfo (.tab) | MapInfo MIF/MID | more on request
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