Published June 20, 2021
| Version 2
Dataset
Open
Resident survey data for Living Lab regions
Contributors
Data collectors:
Work package leader:
- 1. Toerisme Vlaanderen
- 2. University of Split, Faculty of Economics, Business and Tourism
- 3. Breda University of Applied Sciences
- 4. IAMZ-CIHEAM
- 5. Lapin Yliopisto
- 6. Universita Ca'Foscari Venezia
Description
The datasets present collected data through resident surveys on the perceptions on tourism development and the state of cultural heritage, as part of the Horizon 2020 funded project SmartCulTour (www.smartcultour.eu).
The data is collected on individual respondent level for Local Administrative Units (LAUs) for the following municipalities/cities:
- Spain: Huesca, Graus, Benasque, Barbastro, Ainsa, Jaca, Sariñena
- the Netherlands: Rotterdam, Dordrecht, Molenlanden, Ridderkerk, Zwijndrecht, Barendrecht, Delft
- Belgium: Dendermonde, Puurs-Sint-Amands, Bornem, Berlare, Aalst, Denderleeuw, Willebroek
- Croatia: Split, Trogir, Kaštela, Solin, Sinj, Dugopolje, Klis
- Finland: Utsjoki
- Italy: Vicenza, Caldogno, Grumolo, Pojana Maggiore, Lonigo, Montagnana
The data is presented as cross-sectional data and available for the following year: 2020.
Please consult the metadata on each dataset for an overview of collected indicators and units of measurement.
Files
Huesca Living Lab resident survey 2020.csv
Files
(861.1 kB)
Name | Size | Download all |
---|---|---|
md5:955222f5f5f93afec2f099a10008f03e
|
31.9 kB | Download |
md5:b4980dc0a511146e14dd4a18800f86ce
|
8.2 kB | Preview Download |
md5:c449dcfdb8a8abe3f586e4f902f804e1
|
31.7 kB | Download |
md5:a47ed8121cef944209f2b0de160cf7c5
|
12.5 kB | Preview Download |
md5:abfbb33489e3e502ac6be8497168f313
|
41.5 kB | Download |
md5:6bd4d8bf583ab873048a3276bdadb9f1
|
591.8 kB | Preview Download |
md5:a48cc31d3deadf0c45f4cdda42aba910
|
31.7 kB | Download |
md5:27ecf83c923c4c0d38091da680fd20b5
|
32.9 kB | Preview Download |
md5:1040c9ce3862976e0f10a3fbdaf3f8c7
|
31.6 kB | Download |
md5:050f03270d76267f04162362177c4ce0
|
793 Bytes | Preview Download |
md5:80e1b3a6772276b9fee64bd913ddf040
|
31.7 kB | Download |
md5:8d52dfac0aef5415e8f62cf28e5e88e5
|
14.7 kB | Preview Download |