Abstract

This paper makes two important contributions to understand the mobility patterns of scientists. First, by combining two large-scale data sets covering the publications of 3.5 mio scientists over 60 years, we are able to reveal the geographical paths of scientists. Each path contains, on the individual level, information about the cities (resolved on real geographical space) and the time (in years) spent there. A statistical analysis gives empirical insights into the geographical distance scientists move for a new affiliation and their age when moving. From the individual career paths, we further reconstruct the world network of movements of scientists, where the nodes represent cities and the links in- and outflow of scientists between cities. We analyze the topological properties of this network with respect to degree distribution, local clustering coefficients, path lengths and assortativity. The second important contribution is an agent-based model that allows to reproduce the empirical findings, both on the level of scientists and of the network. The model considers that agents have a fitness and consider potential new locations if they allow to increase this fitness. Locations on the other hand rank agents against their fitness and consider them only if they still have a capacity for them. This leads to a matching problem which is solved algorithmically. Using empirical data to calibrate our model and to determine its initial conditions, we are able to validate the model against the measured distributions. This allows to interpret the model assumptions as microbased decision rules that explain the observed mobility patterns of scientists.

Highlights

  • This page was generated automatically upon download from the ETH Zurich Research Collection

  • High skill labour is an important factor underpinning the competitive advantage of modern economies

  • In short the geographical career paths are the sequence of locations an author has had an affiliation with

Read more

Summary

Introduction

This page was generated automatically upon download from the ETH Zurich Research Collection. We study the migration of scientists on a global scale, by combining two large data sets covering the publications of 3.5 million scientists over 60 years We analyse their geographical distances moved for a new affiliation and their age when moving, this way reconstructing their geographical “career paths”. Other works have analysed scientists mobility within and across countries, to determine policy ­impacts[11,12] or to study the brain circulation p­ henomenon[13,14,15,16] While most of these studies focus on the aggregated level, e.g., on bilateral flows between countries, there is a need to better understand scientific mobility at the individual l­evel[17,18]. We extract topological features such as the distributions of degrees, local clustering coefficients, path lengths, and assortativity, to demonstrate that these can be reproduced by our agent-based model

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call