We construct a diagnostic predictor for patient disease status based on a single data set of mass spectra of serum samples together with the binary case-control response. The model is logistic regression with Bernoulli log-likelihood augmented either by quadratic ridge or absolute $L_1$ penalties. For ridge penalization using the singular value decomposition we reduce the the number of variables for maximization to the rank of the design matrix. With log-likelihood loss, 10-fold cross-validatory choice is employed to specify the penalization hyperparameter. Predictive ability is judged on a set-aside subset of the data
In biostatistical practice, it is common to use information criteria as a guide for model selection....
In the development of diagnostic and prognostic prediction models, the outcome of interest often con...
In biostatistical practice, it is common to use information criteria as a guide for model selection....
Let us start today our series on classification from scratch... The logistic regression is based on ...
Disease prediction by Machine Learning (ML) models has been experimented a lot by researchers onto s...
Abstract. This paper focuses on regression with binomial response data. In these cases logit regress...
International audienceLogistic regression is a standard tool in statistics for binary classification...
International audienceLogistic regression is a standard tool in statistics for binary classification...
International audienceLogistic regression is a standard tool in statistics for binary classification...
Predictive performance of logistic regression models with 10-fold classification in identifying pati...
International audiencePredicting individual risk is needed to target preventive interventions toward...
International audiencePredicting individual risk is needed to target preventive interventions toward...
International audiencePredicting individual risk is needed to target preventive interventions toward...
In biostatistical practice, it is common to use information criteria as a guide for model selection....
<p>Note: An interaction is denoted by an asterisk. Data are on a single imputed set and are restrict...
In biostatistical practice, it is common to use information criteria as a guide for model selection....
In the development of diagnostic and prognostic prediction models, the outcome of interest often con...
In biostatistical practice, it is common to use information criteria as a guide for model selection....
Let us start today our series on classification from scratch... The logistic regression is based on ...
Disease prediction by Machine Learning (ML) models has been experimented a lot by researchers onto s...
Abstract. This paper focuses on regression with binomial response data. In these cases logit regress...
International audienceLogistic regression is a standard tool in statistics for binary classification...
International audienceLogistic regression is a standard tool in statistics for binary classification...
International audienceLogistic regression is a standard tool in statistics for binary classification...
Predictive performance of logistic regression models with 10-fold classification in identifying pati...
International audiencePredicting individual risk is needed to target preventive interventions toward...
International audiencePredicting individual risk is needed to target preventive interventions toward...
International audiencePredicting individual risk is needed to target preventive interventions toward...
In biostatistical practice, it is common to use information criteria as a guide for model selection....
<p>Note: An interaction is denoted by an asterisk. Data are on a single imputed set and are restrict...
In biostatistical practice, it is common to use information criteria as a guide for model selection....
In the development of diagnostic and prognostic prediction models, the outcome of interest often con...
In biostatistical practice, it is common to use information criteria as a guide for model selection....