Estimating the Gravity Model When Zero Trade Flows are Frequent and Economically Determined

61 Pages Posted: 20 Apr 2016

See all articles by Will J. Martin

Will J. Martin

International Food Policy Research Institute (IFPRI)

Cong S. Pham

Deakin Business School, Deakin University

Date Written: June 16, 2015

Abstract

This paper evaluates the performance of alternative estimators of the gravity equation when zero trade flows result from economically-based data-generating processes with heteroscedastic residuals and potentially-omitted variables. In a standard Monte Carlo analysis, the paper finds that this combination can create seriously biased estimates in gravity models with frequencies of zero frequently observed in real-world data, and that Poisson Pseudo-Maximum-Likelihood models can be important in solving this problem. Standard threshold?Tobit estimators perform well in a Tobit-based data-generating process only if the analysis deals with the heteroscedasticity problem. When the data are generated by a Heckman sample selection model, the Zero-Inflated Poisson model appears to have the lowest bias. When the data are generated by a Helpman, Melitz, and Rubinstein-type model with heterogeneous firms, a Zero-Inflated Poisson estimator including firm numbers appears to provide the best results. Testing on real-world data for total trade throws up additional puzzles with truncated Poisson Pseudo-Maximum-Likelihood and Poisson Pseudo-Maximum-Likelihood estimators being very similar, and Zero-Inflated Poisson and truncated Poisson Pseudo-Maximum-Likelihood identical. Repeating the Monte Carlo analysis taking into account the high frequency of very small predicted trade flows in real-world data reconciles these findings and leads to specific recommendations for estimators.

Keywords: Trade and Multilateral Issues

Suggested Citation

Martin, William J. and Pham, Cong S., Estimating the Gravity Model When Zero Trade Flows are Frequent and Economically Determined (June 16, 2015). World Bank Policy Research Working Paper No. 7308, Available at SSRN: https://ssrn.com/abstract=2619473

William J. Martin (Contact Author)

International Food Policy Research Institute (IFPRI) ( email )

1201 Eye St, NW,
Washington, DC 20005
United States

Cong S. Pham

Deakin Business School, Deakin University ( email )

221 Burwood Highway
Burwood, Victoria 3215
Australia
0392446611 (Phone)

HOME PAGE: http://https://www.deakin.edu.au/about-deakin/people/cong-pham

Do you have negative results from your research you’d like to share?

Paper statistics

Downloads
405
Abstract Views
1,416
Rank
134,376
PlumX Metrics