The stability matters in clinical prediction models because it makes the model to be interpretable and generalizable. It is paramount for high dimensional data, which employ sparse models with feature selection ability. We propose a new method to stabilize sparse support vector machines using intrinsic graph structure of the electronic medical records. The graph structure is exploited using the Jaccard similarity among features. Our method employs a convex function to penalize the pairwise l ∞ -norm of connected feature coefficients in the graph. We apply the alternating direction method of multipliers to solve the proposed formulation. Our experiments are conducted on a synthetic and three real-world hospital datasets. We show that o...
Substantial evidence indicates that major psychiatric disorders are associated with dis-tributed neu...
The recent wide adoption of electronic medical records (EMRs) presents great opportunities and chall...
The goal of the thesis is to propose methods for learning sparse and structured models from data tha...
Stability in clinical prediction models is crucial for transferability between studies, yet has rece...
Abstract. Stability in clinical prediction models is crucial for transferability be-tween studies, y...
Stability in clinical prediction models is crucial for transferability between studies, yet has rece...
Stability in clinical prediction models is crucial for transferability between studies, yet has rece...
We investigate feature stability in the context of clinical prognosis derived from high-dimensional ...
AbstractEmerging Electronic Medical Records (EMRs) have reformed the modern healthcare. These record...
The support vector machine (SVM) is a popular method for classification, well known for finding the ...
Emerging Electronic Medical Records (EMRs) have reformed the modern healthcare. These records have g...
AbstractModern healthcare is getting reshaped by growing Electronic Medical Records (EMR). Recently,...
Modern healthcare is getting reshaped by growing Electronic Medical Records (EMR). Recently, these r...
Abstract—We investigate feature stability in the context of clin-ical prognosis derived from high-di...
To date, the instability of prognostic predictors in a sparse high dimensional model, which hinders ...
Substantial evidence indicates that major psychiatric disorders are associated with dis-tributed neu...
The recent wide adoption of electronic medical records (EMRs) presents great opportunities and chall...
The goal of the thesis is to propose methods for learning sparse and structured models from data tha...
Stability in clinical prediction models is crucial for transferability between studies, yet has rece...
Abstract. Stability in clinical prediction models is crucial for transferability be-tween studies, y...
Stability in clinical prediction models is crucial for transferability between studies, yet has rece...
Stability in clinical prediction models is crucial for transferability between studies, yet has rece...
We investigate feature stability in the context of clinical prognosis derived from high-dimensional ...
AbstractEmerging Electronic Medical Records (EMRs) have reformed the modern healthcare. These record...
The support vector machine (SVM) is a popular method for classification, well known for finding the ...
Emerging Electronic Medical Records (EMRs) have reformed the modern healthcare. These records have g...
AbstractModern healthcare is getting reshaped by growing Electronic Medical Records (EMR). Recently,...
Modern healthcare is getting reshaped by growing Electronic Medical Records (EMR). Recently, these r...
Abstract—We investigate feature stability in the context of clin-ical prognosis derived from high-di...
To date, the instability of prognostic predictors in a sparse high dimensional model, which hinders ...
Substantial evidence indicates that major psychiatric disorders are associated with dis-tributed neu...
The recent wide adoption of electronic medical records (EMRs) presents great opportunities and chall...
The goal of the thesis is to propose methods for learning sparse and structured models from data tha...