Fabrizio Colella

Fabrizio Colella

Assistant Professor of Economics

USI University, Lugano

fabrizio.colella@usi.ch

I am interested in Labor Economics and Microeconometrics. My research focuses on understanding how economic shocks and the discriminatory behaviors of agents impact the performance of workers and their sorting into different jobs.

I am affiliated with CReAM - UCL, the RF Berlin, HEC Lausanne, the Swiss National Bank, and the Fondazione Rodolfo DeBenedetti.






Working Papers

Tighter money-laundering regulations in offshore financial havens may inadvertently spur incentives to launder money domestically. Our study exploits regulations targeting financially based money laundering in Caribbean jurisdictions to uncover the creation of front companies in the United States. We find that counties exposed via offshore financial links to these jurisdictions experienced an increase in business activities after the tightening of anti-money-laundering regulations. The effect is more pronounced among small firms, in sectors at high risk of money laundering, and in regions with high intensities of drug trafficking. Our work provides the first empirical evidence of the real effects of policy-induced money-laundering leakage.

Revision requested at EJ

This paper examines the extent to which changes in international market relative prices lead to shifts in firms’ skill requirements through trade, in the context of an exogenous currency appreciation. On January 15, 2015 the Swiss National Bank unexpectedly abandoned the exchange rate floor with the Euro, causing a 15% increase of the value of the Swiss franc, which remained relatively stable in the subsequent years. This unforeseen appreciation immediately impacted the relative price of trade, creating new incentives and opportunities for import, while simultaneously reducing expected profits for firms exposed to foreign competition. I study how this sharp change in trade conditions affected skill requirements in Switzerland using novel data on trade and labor demand. Specifically, I merge trade data containing information on each single import or export transaction made by Swiss firms to firm-specific job postings data. I find that in the two years after the shock firms with a workforce more exposed to offshorability and automation, increased imports and posted more job ads for highly skilled workers. For these firms, a 10 percent increase in monthly import translates into a 2.1 percent reduction in the routine intensity of their labor demand.

Analyses of spatial or network data are now very common. Nevertheless, statistical inference is challenging since unobserved heterogeneity can be correlated across neighboring observational units. We develop an estimator for the variance-covariance matrix (VCV) of OLS and 2SLS that allows for arbitrary dependence of the errors across observations in space or network structure and across time periods. As a proof of concept, we conduct Monte Carlo simulations in a geospatial setting based on U.S. metropolitan areas. Tests based on our estimator of the VCV asymptotically correctly reject the null hypothesis, whereas conventional inference methods, e.g., those without clusters or with clusters based on administrative units, reject the null hypothesis too often. We also provide simulations in a network setting based on the IDEAS structure of coauthorship and real-life data on scientific performance. The Monte Carlo results again show that our estimator yields inference at the correct significance level even in moderately sized samples and that it dominates other commonly used approaches to inference in networks. We provide guidance to the applied researcher with respect to (i) whether or not to include potentially correlated regressors and (ii) the choice of cluster bandwidth. Finally, we provide a companion statistical package (acreg) enabling users to adjust the OLS and 2SLS coefficient’s standard errors to account for arbitrary dependence.

This paper investigates the effect of supporters on the performance of soccer players by skin color using objective player performance data and an automated skin color recognition algorithm. Identification comes from an exceptional change in access to stadiums: due to the COVID-19 restrictions, one third of the games of the highest Italian soccer league 2019/2020 season were played in closed stadiums. I identify a significant increase in the performance of non-white players, relative to white players, when supporters are banned from the stadium. The effect does not differ between home and away games, and players playing in top versus minor teams, while weaker players are impacted more than others. These results suggest that discrimination faced by non-white individuals affects performance.

Teaching

Labor Economics and Policy
USI Lugano - MSc in Economics - Spring
HEC Lausanne - MSc in Economics - Fall 2020, 2021

Econometrics
USI Lugano - MSc in Economics - Fall

Teaching Assistant
- Econometrics, HEC Lausanne - MSc in Economics - Fall 2017/18/19
- International Trade, HEC Lausanne - BSc in Economics - Spring 2017/18/20/21
- Environmental Economics, HEC Lausanne - MSc in Economics - Spring 2017

Contact

Centre for Research & Analysis of Migration
Department of Economics, University College London
Drayton House, 30 Gordon St, London WC1H 0AX, UK
f.colella@ucl.ac.uk

Istituto di Economia Politica
Università della Svizzera italiana
Via G. Buffi 13, 6900 Lugano, Switzerland
fabrizio.colella@usi.ch

References
David Card - Rafael Lalive - Mathias Thoenig - Christian Dustmann