Publication: Bayesian influence diagnostics in radiocarbon dating
Loading...
Identifiers
Publication date
Reading date
Event date
Start date of the public exhibition period
End date of the public exhibition period
Authors
Advisors
Authors of photography
Person who provides the photography
Journal Title
Journal ISSN
Volume Title
Publisher
Taylor & Francis
Abstract
Linear models constitute the primary statistical technique for any experimental science. A major topic in this area is the detection of influential subsets of data, that is, of observations that are influential in terms of their effect on the estimation of parameters in linear regression or of the total population parameters. Numerous studies exist on radiocarbon dating which propose a value consensus and remove possible outliers after the corresponding testing. An influence analysis for the value consensus from a Bayesian perspective is developed in this article.
Doctoral program
Related publication
Research projects
Description
Bibliographic reference
Journal of Applied Statistics, vol 40,nº 1,p. 28-39






