Arguments
OR
A number specifying the maximum ratio for excluding models in
Occam's window.
nbest
A positive integer specifying the number of models of each size
to be considered by leaps-and-bounds in determining the model space for
Bayesian Model Averaging. The default value is 10.
maxNvar
A positive integer specifying the maximum number of variables
(excluding the intercept) used in each iteration of BMA. The default
value is 30.
thresProbne0
Threshold (in percent) for the posterior probability that
each variable is has a non-zero coefficient (in percent).
Variables with posterior probability less than thresProbne0
are removed in future BMA iterations. The default value is 1 percent.
keepModels
A logical value indicating whether or not to keep the BMA models
from all of the iterations and apply Occam's window using OR
at
the end, or to apply Occam's window in all BMA iterations and return
the final model. The default is not to keep the models. Setting the
argument to TRUE
requires more memory and may slow the
computation as a result.
maxIter
A positive integer giving a limit on the number of iterations of
iterateBMAlm
. The default value is 20000. iterateBMAlm
will terminate in fewer than maxIter
iterations if the iterative
BMA modeling process has seen all available variables.
References
K. Lo, A. E. Raftery, K. M. Dombek, J. Zhu, E. E. Schadt, R. E. Bumgarner
and K. Y. Yeung (2012), Integrating External Biological
Knowledge in the Construction of Regulatory Networks from Time-series
Expression Data, BMC Systems Biology, 6:101. K. Y. Yeung, K. M. Dombek, K. Lo, J. E. Mittler, J. Zhu, E. E. Schadt,
R. E. Bumgarner and A. E. Raftery (2011), Construction of
regulatory networks using expression time-series data of a genotyped
population, Proceedings of the National Academy of Sciences,
108(48):19436-41. K. Y. Yeung (with contributions from A. E. Raftery and I. Painter),
iterativeBMA: The Iterative Bayesian Model Averaging (BMA) algorithm,
Bioconductor R package, version 1.8.0 posted in 2009. K. Y. Yeung, R. E. Bumgarner and A. E. Raftery (2005).
Bayesian Model Averaging: Development of an improved multi-class,
gene selection and classification tool for microarray data.
Bioinformatics 21:2394-2402. A. E. Raftery, J. A. Hoeting, C. T. Volinsky, I. Painter and K. Y. Yeung
(2005), BMA: Bayesian Model Averaging, Comnprehensive R Archhive Network
(CRAN), package version 3.15.1 posted in 2012. J. A. Hoeting, D. Madigan, A. E. Raftery, and C. T. Volinsky (1999).
Bayesian Model Averaging: a tutorial,
Statistical Science 14(4): 382-417.