Semi-nonparametric spline modifications to the Cornwell–Schmidt–Sickles estimator: an analysis of US banking productivity

Pavlos Almanidis1, Giannis Karagiannis2, Robin C. Sickles3
1International Tax Services, Ernst & Young LLP, Toronto, Canada
2Department of Economics, University of Macedonia, Thessaloníki, Greece
3Department of Economics, Rice University, Houston, USA

Tóm tắt

This paper modifies the Cornwell, Schmidt and Sickles [CSS (J Econom 46:185–200, 1990)] time-varying specification of technical efficiency to allow for switching patterns in temporal changes, which may occur more than once during the sample period. For this purpose, we move from the (second-order) polynomial specification of the standard CSS to a spline function setup, while keeping CSS’s flexibility regarding the cross-sectional dimension. The spline function specification of the temporal pattern of technical efficiency can accommodate more than one turning point and thus can be non-monotonic. This allows the modeler to account for firm or individual efficiency gains that can occur relatively quickly, for example, changes related to regulation or policy changes, as well as those related to ownership/organization changes (e.g., merger or acquisitions).

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