We consider comparisons of statistical learning algorithms using multiple data sets, via leave-one-in cross-study validation: each of the algorithms is trained on one data set; the resulting model is then validated on each remaining data set. This poses two statistical challenges that need to be addressed simultaneously. The first is the assessment of study heterogeneity, with the aim of identifying a subset of studies within which algorithm comparisons can be reliably carried out. The second is the comparison of algorithms using the ensemble of data sets. We address both problems by integrating clustering and model comparison. We formulate a Bayesian model for the array of cross-study validation statistics, which defines clusters of studie...
Multiparametric assays for risk stratification are widely used in the management of breast cancer, w...
Multiparametric assays for risk stratification are widely used in the management of breast cancer, w...
Multiparametric assays for risk stratification are widely used in the management of breast cancer, w...
We consider comparisons of statistical learning algorithms using multiple data sets, via leave-one-i...
Motivation: Numerous competing algorithms for prediction in high-dimensional settings have been deve...
Motivation: Numerous competing algorithms for prediction in high-dimensional settings have been deve...
We present a Bayesian approach for making statistical inference about the accuracy (or any other sco...
This thesis will be concerned with application of a cross-validation criterion to the choice and as...
Statistical methods for selecting between two competing models have a long and storied history from ...
Statistical methods for selecting between two competing models have a long and storied history from ...
In statistical medicine comparing the predictability or fit of two models can help to determine wheth...
Machine learning is largely an experimental science, of which the evaluation of predictive models is...
Machine learning is largely an experimental science, of which the evaluation of predictive models is...
BackgroundA random multiple-regression model that simultaneously fit all allele substitution effects...
BackgroundA random multiple-regression model that simultaneously fit all allele substitution effects...
Multiparametric assays for risk stratification are widely used in the management of breast cancer, w...
Multiparametric assays for risk stratification are widely used in the management of breast cancer, w...
Multiparametric assays for risk stratification are widely used in the management of breast cancer, w...
We consider comparisons of statistical learning algorithms using multiple data sets, via leave-one-i...
Motivation: Numerous competing algorithms for prediction in high-dimensional settings have been deve...
Motivation: Numerous competing algorithms for prediction in high-dimensional settings have been deve...
We present a Bayesian approach for making statistical inference about the accuracy (or any other sco...
This thesis will be concerned with application of a cross-validation criterion to the choice and as...
Statistical methods for selecting between two competing models have a long and storied history from ...
Statistical methods for selecting between two competing models have a long and storied history from ...
In statistical medicine comparing the predictability or fit of two models can help to determine wheth...
Machine learning is largely an experimental science, of which the evaluation of predictive models is...
Machine learning is largely an experimental science, of which the evaluation of predictive models is...
BackgroundA random multiple-regression model that simultaneously fit all allele substitution effects...
BackgroundA random multiple-regression model that simultaneously fit all allele substitution effects...
Multiparametric assays for risk stratification are widely used in the management of breast cancer, w...
Multiparametric assays for risk stratification are widely used in the management of breast cancer, w...
Multiparametric assays for risk stratification are widely used in the management of breast cancer, w...