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Exploring the potential of Flickr User–Generated Content for Tourism Research: Insights from Portugal

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31 dic 2024
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Figure 1:

The flowchart of data collection
Source: Author’s construction.
The flowchart of data collection Source: Author’s construction.

Figure 2:

The flowchart of data cleaning
Source: Author’s construction.
The flowchart of data cleaning Source: Author’s construction.

Figure 3:

Users’ activity by month (2010-2022).
Source: Author’s construction
Users’ activity by month (2010-2022). Source: Author’s construction

Figure 4:

Guests (2018-2021) versus Users (2010-2022) in Portugal
Source: Author’s construction
Guests (2018-2021) versus Users (2010-2022) in Portugal Source: Author’s construction

Figure 5:

Number of visits by user in Portugal (2010-2022)
Source: Author’s construction.
Number of visits by user in Portugal (2010-2022) Source: Author’s construction.

Users’ country of residence accuracy combining crossing median centre, time zone, and self-reported home location methods_

Country Accuracy (%)
Portugal 95%
Spain 94%
United Kingdom 85%
United States 91%
France 84%
Italy 83%
Germany 70%
Brazil 96%
Netherlands 62%
Canada 79%

Number of visits by Flickr users’ country of residence (2010–2022)

Nr. Visits Total Spain United Kingdom France United States Italy
1 79% 69% 77% 81% 83% 87%
2 12% 17% 13% 13% 9% 9%
3 4% 6% 3% 2% 4% 3%
4 2% 3% 2% 2% 2% 1%
5 1% 1% 1% 1% 1% 1%

Users’ country of residence using centrographic measures (mean and median centre)

Countries Total Median - Accuracy (%) Media - Accuracy (%)
Portugal 2659 88% 63%
Spain 2001 83% 56%
United Kingdom 1477 65% 32%
Italy 771 64% 29%
France 772 66% 36%
United States 808 53% 62%
Germany 654 56% 21%
Brazil 541 55% 53%
Netherlands 455 48% 24%
Canada 252 45% 58%

Methods used to distinguish visitors and residents through Flickr photos_

Geographic scale Authors Study areas Method
Urban (De Choudhury et al., 2010) Barcelona, Spain; Paris, France; London, UK; San Francisco, New York City, USA. A time span of 21 days between the first and last photo taken and at least two POIs visited in the same city to be identified as a tourist
(Straumann et al., 2014) Zurich A semi-automated methodology to classify the user location attribute of Flickr user profiles was employed (extract the countries of residence)
(Kádár & Gede, 2013) Budapest Used a threshold of 5 days. If this difference is smaller than 5 days, the user can be considered a visitor; otherwise, he/she is a local.
(Yan et al., 2017) Central Philippines islands region Classification of tourist vs. non-tourist based on user profiles.
Regional (Kádár & Gede, 2022) Danube Bend Locals if they have an interval at least 30 days long or have at least 4 intervals visit; space–time patterns, user data and profile analysis
(Girardin et al., 2007, 2008) Province of Florence Visitor if all photos are taken within a period of 30 days, and inhabitant if photos have an interval greater than 30 days.
(Chen et al., 2019b) China Data screening, text data similarity calculation, geographical location clustering, and time series data modelling.
National (Önder, 2017) Austria A time span of 30 days between the first and last photo taken to identify tourists.
(Stepchenkova & Zhan, 2013) Peru Photos with the tags “Peru” and “travel” considered indicators of images taken by travelers rather than residents
Global (Wood et al., 2013) 836 sites in 31 countries around the world User’s current location was the origin of each trip and used this information to calculate the proportion of photographers originating from each country.

Flickr users’ activity (2010-2022)

Number Photos per User total of Users (%) total of Visitors (%) total of Locals (%)
1 26 26 20
2 11 12 10
3 7 7 6
4 5 6 4
5 4 4 3
6 3 3 3
7 3 3 2
8 2 2 2
9 2 2 2
10 2 2 2
11 2 2 1
12 1 1 1

Algorithm for Flick users’ classification

User type Nr. % Rules
Local/resident 2659 9 if(location(user) equal Portugal) then type = Local
Visitor 12144 41 if(location(user) not equal Portugal) then type = Visitor OR if(timezone(user) not equal Portugal) then type = Visitor
Unknown 15087 50 -
Total 29890 100 -

Flick users by nationality and Guests in Portugal

Country of residence Number (#) of Flickr users (2010-22) Users (2010-22) % Number (#) of Flickr users (2018-22) Users (2018-22) % Guests (2018-2022) %
Spain 2001 21 349 20 10,5
United Kingdom 1477 15 306 18 7,9
France 772 8 161 9 6,9
United States 808 8 167 10 5
Italy 771 8 89 5 3
Germany 654 7 147 9 5,4
Brazil 541 6 70 4 4,8
Netherlands 455 5 103 6 2,6
Canada 252 3 41 2 1,4
Belgium 201 2 32 2 1,4
Switzerland 174 2 36 2 1,3
Russia 125 1 18 1 0,6
Ireland 115 1 21 1 1,8
Sweden 103 1 18 1 0,6
Australia 108 1 19 1 0,5
Austria 93 1 16 1 0,5
Poland 77 1 16 1 1
Norway 74 1 15 1 0,3
Denmark 70 1 9 1 0,5
Finland 73 1 15 1 0,3
China 51 1 9 1 1,1
Argentina 46 0 9 1 0,3