Gender, Behavior and Decision-Making
The Women & Science Chair of Université Paris Dauphine-PSL will host the first session of the seminar « Gender, Behavior and Decision-Making » on Tuesday the 30th of November from 8:30 am to 10:00 am in room A709 at Dauphine University.
We will have the pleasure to listen to two presentations.
Fernanda Beigel and Mario Pecheny will present "Gendered circulation of scientific production in Brazil and Argentina".
Elvira Sojili will present in video conference from Sydney "The international gender-patent gap- Learning from 120 years of evidence".
- Fernanda Beigel works as a Principal Researcher at the National Council for Scientific and Technical Research (CONICET) and as Head Professor at the Faculty of Political and Social Sciences of the National University of Cuyo (UNCu) in Mendoza Argentina. She iscurently in Paris as an Invited Researcher by the Fondation Maison des sciences de l'homme (FMSH- Programme DEA).
- Mario Pecheny is Vice President of Scientific Affairs for Argentina’s National Council of Scientific and Technical Research (CONICET) and a professor and researcher at the University of Buenos Aires.
- Elvira Sojli is an Associate Professor of Finance and Marie Curie Fellow in the School of Banking and Finance, the University of New South Wales. She is also the president elect of FIRN, the premier network of finance researchers and PhD students across Australiaand New Zealand and will be president from 2022.
The seminar will also be broadcasted as a Teams event. Registration is mandatory.
The Women and Science Chair at Université Paris Dauphine-PSL, created with the support of the L’Oréal Foundation, the Generali Foundation, La Poste, and the Talan Group, seeks to engage and foster interdisciplinary approaches to analyzing the causes and consequences of the underrepresentation of women in careers in scientific research and academia. The Women and Science Chair is member of the UNESCO chairs network.
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