In machine learning often a tradeoff must be made between accuracy and intelligibility. More accurate models such as boosted trees, random forests, and neural nets usually are not intelligible, but more intelligible models such as logistic regression, naive-Bayes, and single decision trees often have significantly worse accuracy. This tradeoff sometimes limits the accuracy of models that can be applied in mission-critical applications such as healthcare where being able to under-stand, validate, edit, and trust a learned model is important. We present two case studies where high-performance gener-alized additive models with pairwise interactions (GA2Ms) are applied to real healthcare problems yielding intelligible models with state-of-the-a...
Nowadays, physicians have at their hands a huge amount of data produced by a large set of diagnostic...
This paper describes the application of eight statistical and machine-learning methods to derive com...
There has been a steady growth in machine learning research in healthcare, however, progress is diff...
In machine learning often a tradeoff must be made between accuracy and intelligibility. More accurat...
The lack of interpretability in artificial intelligence models (i.e., deep learning, machine learnin...
There have been many recent advances in machine learning, resulting in models which have had major i...
Machine Learning (ML) models play an important role in healthcare thanks to their remarkable perform...
A model with capability for precisely predicting readmission is a target being pursued worldwide. Th...
Unplanned hospital readmissions are a burden to patients and increase healthcare costs. A wide varie...
Reducing unplanned readmissions is a major focus of current hospital quality efforts. In order to av...
International audienceStudies in the last decade have focused on identifying patients at risk of rea...
Interest in Machine Learning applications to tackle clinical and biological problems is increasing. ...
The accuracy and flexibility of artificial intelligence (AI) systems often comes at the cost of a de...
The accuracy and flexibility of artificial intelligence (AI) systems often comes at the cost of a de...
The readmission rate is an important indicator of the hospital quality of care. With the upsetting i...
Nowadays, physicians have at their hands a huge amount of data produced by a large set of diagnostic...
This paper describes the application of eight statistical and machine-learning methods to derive com...
There has been a steady growth in machine learning research in healthcare, however, progress is diff...
In machine learning often a tradeoff must be made between accuracy and intelligibility. More accurat...
The lack of interpretability in artificial intelligence models (i.e., deep learning, machine learnin...
There have been many recent advances in machine learning, resulting in models which have had major i...
Machine Learning (ML) models play an important role in healthcare thanks to their remarkable perform...
A model with capability for precisely predicting readmission is a target being pursued worldwide. Th...
Unplanned hospital readmissions are a burden to patients and increase healthcare costs. A wide varie...
Reducing unplanned readmissions is a major focus of current hospital quality efforts. In order to av...
International audienceStudies in the last decade have focused on identifying patients at risk of rea...
Interest in Machine Learning applications to tackle clinical and biological problems is increasing. ...
The accuracy and flexibility of artificial intelligence (AI) systems often comes at the cost of a de...
The accuracy and flexibility of artificial intelligence (AI) systems often comes at the cost of a de...
The readmission rate is an important indicator of the hospital quality of care. With the upsetting i...
Nowadays, physicians have at their hands a huge amount of data produced by a large set of diagnostic...
This paper describes the application of eight statistical and machine-learning methods to derive com...
There has been a steady growth in machine learning research in healthcare, however, progress is diff...