Files
Abstract
Most productivity indexes can be exhaustively decomposed into measures of technical
change and efficiency change. Estimating these components usually involves the use
of data envelopment analysis (DEA) or stochastic frontier analysis (SFA) models. This
paper shows how assumptions concerning technologies, markets and firm behaviour can
be used to frame these models. The paper explains that the assumptions underpinning
common DEA models are rarely, if ever, true. On the other hand, the assumptions underpinning
basic SFA models are almost always true. The parameters of basic SFA
models can be estimated using ordinary least squares and two-stage least squares methods.
More complex SFA models can be estimated using maximum likelihood methods.
Unfortunately, the assumptions underpinning some of these more complex models are
generally not true. This has important implications for estimating the drivers of productivity
change. To illustrate, the paper uses common least squares and maximum
likelihood methods to estimate the drivers of productivity change in U.S. agriculture.
As expected, the different estimators lead to qualitatively different estimates of the efficiency
change components productivity change.