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Understanding Industrial Transformation: Views from Different Disciplines

Xander Olsthoorn ; Anna J. Wieczorek (eds.)

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Institución detectada Año de publicación Navegá Descargá Solicitá
No detectada 2006 SpringerLink

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Tipo de recurso:

libros

ISBN impreso

978-1-4020-3755-9

ISBN electrónico

978-1-4020-4418-2

Editor responsable

Springer Nature

País de edición

Reino Unido

Fecha de publicación

Información sobre derechos de publicación

© Springer 2006

Tabla de contenidos

Introduction

Xander Olsthoorn; Anna J. Wieczorek

A number of papers have recently contrasted classical inference estimation methods for logit models with Bayesian methods. It has been argued that two particularly appealing features of the Bayesian approach are its relative simplicity in estimation, and its ability to derive, individual-specific willingness to pay () measures that are less problematic than the classical approaches in terms of extreme values and unexpected signs. This paper challenges this claim by deriving both population derived measures and individual-specific values based on the classical mixed logit model, establishing the extent of unacceptable valuations. Our aim is not to estimate Bayesian contrasts per se but to show that the classical inference approach is likewise straightforward — indeed the individual-specific estimates are a by-product of the parameter estimation process. We also reveal the benefits of calculating measures from ratios of individual parameters which are behaviourally more appealing approximations to the true values of each individual, in contrast to draws from population distributions that run the risk of allocating two parameters that are poorly juxtaposed in a relative sense, resulting in extreme value estimates. Our results suggest that while extreme values and unexpected signs cannot be ruled out (nor can they in the Bayesian framework), the overall superiority of the Bayesian method appears overstated. Both approaches have merit.

Pp. 1-11

A Psychological View on Industrial Transformation and Behaviour

Joop de Boer

A number of papers have recently contrasted classical inference estimation methods for logit models with Bayesian methods. It has been argued that two particularly appealing features of the Bayesian approach are its relative simplicity in estimation, and its ability to derive, individual-specific willingness to pay () measures that are less problematic than the classical approaches in terms of extreme values and unexpected signs. This paper challenges this claim by deriving both population derived measures and individual-specific values based on the classical mixed logit model, establishing the extent of unacceptable valuations. Our aim is not to estimate Bayesian contrasts per se but to show that the classical inference approach is likewise straightforward — indeed the individual-specific estimates are a by-product of the parameter estimation process. We also reveal the benefits of calculating measures from ratios of individual parameters which are behaviourally more appealing approximations to the true values of each individual, in contrast to draws from population distributions that run the risk of allocating two parameters that are poorly juxtaposed in a relative sense, resulting in extreme value estimates. Our results suggest that while extreme values and unexpected signs cannot be ruled out (nor can they in the Bayesian framework), the overall superiority of the Bayesian method appears overstated. Both approaches have merit.

Pp. 13-32

Sociological Perspectives for Industrial Transformation

Arthur P. J. Mol; Gert Spaargaren

A number of papers have recently contrasted classical inference estimation methods for logit models with Bayesian methods. It has been argued that two particularly appealing features of the Bayesian approach are its relative simplicity in estimation, and its ability to derive, individual-specific willingness to pay () measures that are less problematic than the classical approaches in terms of extreme values and unexpected signs. This paper challenges this claim by deriving both population derived measures and individual-specific values based on the classical mixed logit model, establishing the extent of unacceptable valuations. Our aim is not to estimate Bayesian contrasts per se but to show that the classical inference approach is likewise straightforward — indeed the individual-specific estimates are a by-product of the parameter estimation process. We also reveal the benefits of calculating measures from ratios of individual parameters which are behaviourally more appealing approximations to the true values of each individual, in contrast to draws from population distributions that run the risk of allocating two parameters that are poorly juxtaposed in a relative sense, resulting in extreme value estimates. Our results suggest that while extreme values and unexpected signs cannot be ruled out (nor can they in the Bayesian framework), the overall superiority of the Bayesian method appears overstated. Both approaches have merit.

Pp. 33-52

Industrial Transformation and International Law

Joyeeta Gupta

A number of papers have recently contrasted classical inference estimation methods for logit models with Bayesian methods. It has been argued that two particularly appealing features of the Bayesian approach are its relative simplicity in estimation, and its ability to derive, individual-specific willingness to pay () measures that are less problematic than the classical approaches in terms of extreme values and unexpected signs. This paper challenges this claim by deriving both population derived measures and individual-specific values based on the classical mixed logit model, establishing the extent of unacceptable valuations. Our aim is not to estimate Bayesian contrasts per se but to show that the classical inference approach is likewise straightforward — indeed the individual-specific estimates are a by-product of the parameter estimation process. We also reveal the benefits of calculating measures from ratios of individual parameters which are behaviourally more appealing approximations to the true values of each individual, in contrast to draws from population distributions that run the risk of allocating two parameters that are poorly juxtaposed in a relative sense, resulting in extreme value estimates. Our results suggest that while extreme values and unexpected signs cannot be ruled out (nor can they in the Bayesian framework), the overall superiority of the Bayesian method appears overstated. Both approaches have merit.

Pp. 53-73

Contributions to Transformation Research from Political Science

Klaus Jacob; Frank Biermann; Marleen van de Kerkhof; Anna J. Wieczorek

A number of papers have recently contrasted classical inference estimation methods for logit models with Bayesian methods. It has been argued that two particularly appealing features of the Bayesian approach are its relative simplicity in estimation, and its ability to derive, individual-specific willingness to pay () measures that are less problematic than the classical approaches in terms of extreme values and unexpected signs. This paper challenges this claim by deriving both population derived measures and individual-specific values based on the classical mixed logit model, establishing the extent of unacceptable valuations. Our aim is not to estimate Bayesian contrasts per se but to show that the classical inference approach is likewise straightforward — indeed the individual-specific estimates are a by-product of the parameter estimation process. We also reveal the benefits of calculating measures from ratios of individual parameters which are behaviourally more appealing approximations to the true values of each individual, in contrast to draws from population distributions that run the risk of allocating two parameters that are poorly juxtaposed in a relative sense, resulting in extreme value estimates. Our results suggest that while extreme values and unexpected signs cannot be ruled out (nor can they in the Bayesian framework), the overall superiority of the Bayesian method appears overstated. Both approaches have merit.

Pp. 75-97

Ecologicl Economics and Industrial Trnasformation

Xander Olsthoorn; Onno Kuik

A number of papers have recently contrasted classical inference estimation methods for logit models with Bayesian methods. It has been argued that two particularly appealing features of the Bayesian approach are its relative simplicity in estimation, and its ability to derive, individual-specific willingness to pay () measures that are less problematic than the classical approaches in terms of extreme values and unexpected signs. This paper challenges this claim by deriving both population derived measures and individual-specific values based on the classical mixed logit model, establishing the extent of unacceptable valuations. Our aim is not to estimate Bayesian contrasts per se but to show that the classical inference approach is likewise straightforward — indeed the individual-specific estimates are a by-product of the parameter estimation process. We also reveal the benefits of calculating measures from ratios of individual parameters which are behaviourally more appealing approximations to the true values of each individual, in contrast to draws from population distributions that run the risk of allocating two parameters that are poorly juxtaposed in a relative sense, resulting in extreme value estimates. Our results suggest that while extreme values and unexpected signs cannot be ruled out (nor can they in the Bayesian framework), the overall superiority of the Bayesian method appears overstated. Both approaches have merit.

Pp. 99-117

An Evolutionary Economics Perspective in Industrial Transformation

Jeroen C. J. M. van den Bergh; Marjan W. Hofkes; Frans H. Oosterhuis

A number of papers have recently contrasted classical inference estimation methods for logit models with Bayesian methods. It has been argued that two particularly appealing features of the Bayesian approach are its relative simplicity in estimation, and its ability to derive, individual-specific willingness to pay () measures that are less problematic than the classical approaches in terms of extreme values and unexpected signs. This paper challenges this claim by deriving both population derived measures and individual-specific values based on the classical mixed logit model, establishing the extent of unacceptable valuations. Our aim is not to estimate Bayesian contrasts per se but to show that the classical inference approach is likewise straightforward — indeed the individual-specific estimates are a by-product of the parameter estimation process. We also reveal the benefits of calculating measures from ratios of individual parameters which are behaviourally more appealing approximations to the true values of each individual, in contrast to draws from population distributions that run the risk of allocating two parameters that are poorly juxtaposed in a relative sense, resulting in extreme value estimates. Our results suggest that while extreme values and unexpected signs cannot be ruled out (nor can they in the Bayesian framework), the overall superiority of the Bayesian method appears overstated. Both approaches have merit.

Pp. 119-140

A Neo-Classical Economic View on Technological Transitions

Frank A. G. den Butter; Marjan W. Hofkes

A number of papers have recently contrasted classical inference estimation methods for logit models with Bayesian methods. It has been argued that two particularly appealing features of the Bayesian approach are its relative simplicity in estimation, and its ability to derive, individual-specific willingness to pay () measures that are less problematic than the classical approaches in terms of extreme values and unexpected signs. This paper challenges this claim by deriving both population derived measures and individual-specific values based on the classical mixed logit model, establishing the extent of unacceptable valuations. Our aim is not to estimate Bayesian contrasts per se but to show that the classical inference approach is likewise straightforward — indeed the individual-specific estimates are a by-product of the parameter estimation process. We also reveal the benefits of calculating measures from ratios of individual parameters which are behaviourally more appealing approximations to the true values of each individual, in contrast to draws from population distributions that run the risk of allocating two parameters that are poorly juxtaposed in a relative sense, resulting in extreme value estimates. Our results suggest that while extreme values and unexpected signs cannot be ruled out (nor can they in the Bayesian framework), the overall superiority of the Bayesian method appears overstated. Both approaches have merit.

Pp. 141-162

Multi-Level Perspective on System Innovation: Relevance for Industrial Transformation

Frank W. Geels

A number of papers have recently contrasted classical inference estimation methods for logit models with Bayesian methods. It has been argued that two particularly appealing features of the Bayesian approach are its relative simplicity in estimation, and its ability to derive, individual-specific willingness to pay () measures that are less problematic than the classical approaches in terms of extreme values and unexpected signs. This paper challenges this claim by deriving both population derived measures and individual-specific values based on the classical mixed logit model, establishing the extent of unacceptable valuations. Our aim is not to estimate Bayesian contrasts per se but to show that the classical inference approach is likewise straightforward — indeed the individual-specific estimates are a by-product of the parameter estimation process. We also reveal the benefits of calculating measures from ratios of individual parameters which are behaviourally more appealing approximations to the true values of each individual, in contrast to draws from population distributions that run the risk of allocating two parameters that are poorly juxtaposed in a relative sense, resulting in extreme value estimates. Our results suggest that while extreme values and unexpected signs cannot be ruled out (nor can they in the Bayesian framework), the overall superiority of the Bayesian method appears overstated. Both approaches have merit.

Pp. 163-186

Managing Transitions for Sustainable Development

Derk Loorbach; Jan Rotmans

A number of papers have recently contrasted classical inference estimation methods for logit models with Bayesian methods. It has been argued that two particularly appealing features of the Bayesian approach are its relative simplicity in estimation, and its ability to derive, individual-specific willingness to pay () measures that are less problematic than the classical approaches in terms of extreme values and unexpected signs. This paper challenges this claim by deriving both population derived measures and individual-specific values based on the classical mixed logit model, establishing the extent of unacceptable valuations. Our aim is not to estimate Bayesian contrasts per se but to show that the classical inference approach is likewise straightforward — indeed the individual-specific estimates are a by-product of the parameter estimation process. We also reveal the benefits of calculating measures from ratios of individual parameters which are behaviourally more appealing approximations to the true values of each individual, in contrast to draws from population distributions that run the risk of allocating two parameters that are poorly juxtaposed in a relative sense, resulting in extreme value estimates. Our results suggest that while extreme values and unexpected signs cannot be ruled out (nor can they in the Bayesian framework), the overall superiority of the Bayesian method appears overstated. Both approaches have merit.

Pp. 187-206