Multivariate Distributional Stochastic Frontier Models

08/22/2022
by   Rouven Schmidt, et al.
0

The primary objective of Stochastic Frontier (SF) Analysis is the deconvolution of the estimated composed error terms into noise and inefficiency. Assuming a parametric production function (e.g. Cobb-Douglas, Translog, etc.), might lead to false inefficiency estimates. To overcome this limiting assumption, the production function can be modelled utilizing P-splines. Application of this powerful and flexible tool enables modelling of a wide range of production functions. Additionally, one can allow the parameters of the composed error distribution to depend on covariates in a functional form. The SF model can then be cast into the framework of a Generalized Additive Model for Location, Scale and Shape (GAMLSS). Furthermore, a decision-making unit (DMU) typically produces multiple outputs. It does this by operating several sub-DMUs, which each employ a production process to produce a single output. Therefore, the production processes of the sub-DMUs are typically not independent. Consequently, the inefficiencies may be expected to be dependent, too. In this paper, the Distributional Stochastic Frontier Model (DSFM) is introduced. The multivariate distribution of the composed error term is modeled using a copula. As a result, the presented model is a generalization of the model for seemingly unrelated stochastic frontier regressions by Lai and Huang (2013).

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/27/2019

Quality analysis in acyclic production networks

The production network under examination consists of a number of worksta...
research
01/31/2023

Small area estimation under unit-level generalized additive models for location, scale and shape

Small Area Estimation (SAE) models commonly assume Normal distribution o...
research
12/12/2017

Regression with genuinely functional errors-in-covariates

Contamination of covariates by measurement error is a classical problem ...
research
04/02/2019

Direction Selection in Stochastic Directional Distance Functions

Researchers rely on the distance function to model multiple product prod...
research
09/07/2018

Joint species distribution modeling with additive multivariate Gaussian process priors and heteregenous data

In this work, we propose JSDMs where the responses to environmental cova...
research
03/17/2021

Impact of the error structure on the design and analysis of enzyme kinetic models

The statistical analysis of enzyme kinetic reactions usually involves mo...

Please sign up or login with your details

Forgot password? Click here to reset