Losing Our Minds? New Research Directions on Skilled Migration and Development

Author: Albert Bollard, Alexandre Mas, Amelie F Constant, Andrew Mountford, Annalee Saxenian, Antonio Ciccone, Antonio Spilimbergo, Arslan, Beata S Javorcik, Benjamin F Jones, Brian Snowdon, Cansin Arslan, Catia Batista, Chand, Christopher Parsons, Corrado Maria, C�sar A Hidalgo, D Mckenzie, Dany Bahar, Daron Acemo? Glu, Diego A Comin, Edward N Okeke, Eliakim Katz, Elisabetta Lodigiani, Elisabetta Lodigiani, Eric A Hanushek, Fabian Lange, Fr�d�ric Docquier, Gabriel J Felbermayr, George Psacharopoulos, Hal R Varian, Herbert Br�cker, Hillel Rapoport, Jagdish N Bhagwati, James Antwi, James E Rauch, James J Heckman, Jean-Christophe Dumont, John Gibson, Joshua D Angrist, Kaz Miyagiwa, L Winters, Lant Pritchett, Marcus H B�hme, Marion Mercier, Mariya Aleksynska, Mark Bils, Matthew S Mcglone, Maurice Kugler, Michael A Clemens, Michael A. Clemens, Michael Kremer, Naghsh Nejad, Oded Stark, Olena Ivus, Omar Mahmoud, Paul Collier, Richard A Kronmal, Robert E Hall, Robert J Barro, Rodolfo E Manuelli, Ronald H Coase, Simon Commander, Slesh A Shrestha, Steven N Durlauf, Vito Tanzi, William R Kerr, Yingqi Wei
Publisher: Elsevier BV

ABOUT BOOK

This paper critiques the last decade of research on the effects of high-skill emigration from developing countries, and proposes six new directions for fruitful research. The study singles out a core assumption underlying much of the recent literature, calling it the Lump of Learning model of human capital and development, and describes five ways that research has come to challenge that assumption. It assesses the usefulness of the Lump of Learning model in the face of accumulating evidence. The axioms of the Lump of Learning model have shaped research priorities in this literature, but many of those axioms do not have a clear empirical basis. Future research proceeding from established facts would set different priorities, and would devote more attention to measuring the effects of migration on skilled-migrant households, rigorously estimating human capital externalities, gathering microdata beyond censuses, and carefully considering optimal policy among others. The recent literature has pursued a series of extensions to the Lump of Learning model. This study urges discarding the Lump of Learning model, pointing toward a new paradigm for research on skilled migration and development

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