Acceptance of criteria for health and driver scoring in the general public in Germany
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DOI: 10.1371/journal.pone.0250224
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- Rebitschek, Felix G. & Gigerenzer, Gerd & Keitel, Ariane & Sommer, Sarah & Groß, Christian & Wagner, Gert G., 2021. "Acceptance of Criteria for Health and Driver Scoring In the General Public in Germany," EconStor Open Access Articles and Book Chapters, ZBW - Leibniz Information Centre for Economics, vol. 16(4).
References listed on IDEAS
- Stock, Stephanie & Schmidt, Harald & Büscher, Guido & Gerber, Andreas & Drabik, Anna & Graf, Christian & Lüngen, Markus & Stollenwerk, Björn, 2010. "Financial incentives in the German Statutory Health Insurance: New findings, new questions," Health Policy, Elsevier, vol. 96(1), pages 51-56, June.
- Mercedes Ayuso & Montserrat Guillen & Jens Perch Nielsen, 2019.
"Improving automobile insurance ratemaking using telematics: incorporating mileage and driver behaviour data,"
Transportation, Springer, vol. 46(3), pages 735-752, June.
- Mercedes Ayuso & Montserrat Guillén & Jens Perch Nielsen, 2016. "Improving automobile insurance ratemaking using telematics: incorporating mileage and driver behaviour data," Working Papers XREAP2016-08, Xarxa de Referència en Economia Aplicada (XREAP), revised Dec 2016.
- Mercedes Ayuso & Montserrat Guillén & Jens Perch Nielsen, 2017. "Improving automobile insurance ratemaking using telematics: incorporating mileage and driver behaviour data," Working Papers 2017-01, Universitat de Barcelona, UB Riskcenter.
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