Sort by
Refine Your Search
-
technology. Approach There are many methods that you can use for theory development and/or theory testing, depending on the phenomenon you wish to study and the methodological skills you wish to develop. Our
-
this history is interpreted, mobilised and negotiated in different social contexts. You will use qualitative research methods such as discourse analysis, site-based observation, and interviews with relevant
-
quantitative and qualitative methods. As a PhD candidate in our section, you can design your own PhD project. The themes described below serve as inspiration and reflect the expertise of the department
-
sustainability. Using multi-sited ethnographic methods, it identifies everyday narratives and practices of inclusion and exclusion, revealing how visitors, local communities, and practitioners experience heritage
-
studies, media studies, anthropology, and/or related disciplines; Familiarity with and keen interest in qualitative research methods; Independent thinking and critical analytical skills; Good collaboration
-
studies, media studies, anthropology, and/or related disciplines; Familiarity with and keen interest in qualitative research methods; Independent thinking and critical analytical skills; Good collaboration
-
the set-up of the research, the selection of methods and theories, data collection, analysis, and output. Given the nature of the project, the researcher is expected to work closely with secondary schools
-
, or science or technology studies is a strong plus Experiences with qualitative research approaches, this can include interviews or participant observation Experience with participatory research methods
-
health and (quality of) health care (applying microeconometric methods to survey data as well as to linked administrative datasets). - Testing the “contact hypothesis” (particularly, does diverse contact
-
, startup acquisition, and startup wage setting. The PhD project will be primarily empirical, with a focus on applying modern micro-econometric methods to large scale datasets such as administrative data