Title of article :
An efficient design for model discrimination and parameter estimation in linear models
Author/Authors :
Biswas، Atanu نويسنده , , Chaudhuri، Probal نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2002
Pages :
-708
From page :
709
To page :
0
Abstract :
We consider experimental designs in a regression set-up where the unknown regression function belongs to a known family of nested linear models.The objective of our design is to select the correct model from the family of nested models as well as to estimate efficiently the parameters associated with that model. We show that our proposed design is able to choose the true model with probability tending to one as the number of trials grows to infinity. We also establish that our selected design converges to the optimal design distribution for the true linear model ensuring asymptotic efficiency of least squares estimators of model parameters.
Keywords :
Particle filter , Mixture model , Markov chain Monte Carlo , importance sampling , Generalised linear model , Metropolis–Hastings , Parallel processing , Batch importance sampling
Journal title :
Biometrika
Serial Year :
2002
Journal title :
Biometrika
Record number :
71799
Link To Document :
بازگشت