Distributions of Parameters for Uncertainty Analysis Cannot Be Defined without Using Prior Information

Jun 1, 2010, 00:00
10.1111/j.1524-4733.2010.00712.x
https://www.valueinhealthjournal.com/article/S1098-3015(10)60072-1/fulltext
Title : Distributions of Parameters for Uncertainty Analysis Cannot Be Defined without Using Prior Information
Citation : https://www.valueinhealthjournal.com/action/showCitFormats?pii=S1098-3015(10)60072-1&doi=10.1111/j.1524-4733.2010.00712.x
First page :
Section Title :
Open access? : No
Section Order : 8

Background

Barendregt proposes a method to define an input distribution for a relative risk, as used in the probabilistic sensitivity analysis (PSA), and suggests the method is “non-Bayesian” and thus does not require prior knowledge on the probability distribution of the relative risk.

Aims

To discuss the method from an epistemologically viewpoint.

Materials and Methods

Examination of the underlying assumptions.

Results

The method, like other methods to define input distributions, is Bayesian in character and the implied prior distribution is not very appealing.

Discussion

Bootstrapping offers possibilities to be non-Bayesian, but at the price of giving only non-Bayesian answers. The method presented by Barendregt, however, can not be seen as a bootstrapping approach.

Conclusion

Defining the distribution of a RR or any other model parameter without being a Bayesian is epistemologically impossible. This means that being explicit on prior distributions used for deriving those distributions, and justifying them, is a necessary part of suggesting new ways to define distributions.

Categories :
  • Best Research Practices
  • Decision Modeling & Simulation
  • Methodological & Statistical Research
  • Modeling and simulation
  • Organizational Practices
  • Study Approaches
Tags :
  • Bayesian statistics
  • bootstrapping
  • sensitivity analysis
  • statistics
  • uncertainty analysis
Regions :
  • Global
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