A methodology for co-constructing an interdisciplinary model: from model
to survey, from survey to model
- URL: http://arxiv.org/abs/2011.13604v1
- Date: Fri, 27 Nov 2020 08:41:47 GMT
- Title: A methodology for co-constructing an interdisciplinary model: from model
to survey, from survey to model
- Authors: Elise Beck, Julie Dugdale, Carole Adam, Christelle Ga\"idatzis, Julius
Ba\~ngate
- Abstract summary: This paper aims to answer those crucial questions in the framework of a multidisciplinary research project.
The main contribution of the work is to propose a tool dedicated to multidisciplinary dialogue.
It also proposes a reflexive analysis of the enriching intellectual process carried out by the different disciplines involved.
- Score: 0.9799637101641152
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: How should computer science and social science collaborate to build a common
model? How should they proceed to gather data that is really useful to the
modelling? How can they design a survey that is tailored to the target model?
This paper aims to answer those crucial questions in the framework of a
multidisciplinary research project. This research addresses the issue of
co-constructing a model when several disciplines are involved, and is applied
to modelling human behaviour immediately after an earthquake. The main
contribution of the work is to propose a tool dedicated to multidisciplinary
dialogue. It also proposes a reflexive analysis of the enriching intellectual
process carried out by the different disciplines involved. Finally, from
working with an anthropologist, a complementary view of the multidisciplinary
process is given.
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