A Stochastic Frontier Analysis of Trade Efficiency for the New EU Member States Implications of Brexit:Implications of Brexit

Stack, Marie, Pentecost, Eric and Ravishankar, Geetha (2018). A Stochastic Frontier Analysis of Trade Efficiency for the New EU Member States Implications of Brexit:Implications of Brexit. Economic Issues, 23 (1), pp. 35-53.

Abstract

Examining the trade performance for the new European Union (EU) member states is an important issue in the context of the enlargement process – and in a new era of membership contraction with the likely exit of the United Kingdom from the EU. Typically, the degree of trade integration is assessed by comparing actual trade volumes with potential trade volumes projected from the gravity model parameters estimated for a reference group of countries that best represent normal trade relations. This approach, however, does not compare trade levels against a maximum level of trade defined by a stochastic frontier. In this paper, a stochastic frontier specification of the gravity model is used to identify the efficiency of trade integration relative to maximum trade levels. The findings, based on a panel dataset of bilateral exports from 18 Western European countries to the 13 new member states over the 1995-2022 period, indicate a high degree of trade integration close to two-thirds of frontier estimates. Using forecast data for 2017-2022, trade efficiency should remain broadly stable and even increase for the larger countries in the likely post-Brexit phase.

Divisions: Aston Business School
Additional Information: Copyright of Economic Issues is the property of Economic Issues Education Fund and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use.
Uncontrolled Keywords: Gravity model,Stochastic frontier analysis,New member states,Brexit
Full Text Link:
Related URLs: http://www.econ ... g.uk/Vol23.html (Publisher URL)
Published Date: 2018-03-01
Authors: Stack, Marie
Pentecost, Eric
Ravishankar, Geetha ( 0000-0002-9281-7207)

Download

[img]

Version: Accepted Version


Export / Share Citation


Statistics

Additional statistics for this record