%0 Generic %A Geržinič, Nejc %A van Dalen, Maurizio %A Donners, Barth %A Cats, Oded %D 2024 %T [Supporting Data and Software] The perception of COVID-19 infection risk in Long-distance travel %U %R 10.4121/8a77dbc7-cde0-4c5d-9763-53823af947a4.v1 %K Long-distance travel %K COVID-19 %K Risk perception %K Hierarchical information integration %K Latent Class Choice Model %X

The files included below are part of a research on passengers' perception of infection risk with COVID-19 and its relation to long-distance (international) travel.

 

Data was collected through a Hierarchical Information Integration (HII) approach, where respondents were first asked to rate their perceived risk of infection, based on various safety measures. This subjective risk was then included in a mode choice experiment for long-distance trips, where respondents could choose between car, train and aircraft.


Information on the data and model can be found in the README file and the python script below.

%I 4TU.ResearchData