Prognosis, such as predicting mortality, is common in medicine. When confronted with small numbers of samples, as in rare medical conditions, the task is challenging. We propose a framework for classification with data with small numbers of samples. Conceptually, our solution is a hybrid of multi-task and transfer learning, employing data samples from source tasks as in transfer learning, but considering all tasks together as in multi-task learning. Each task is modelled jointly with other related tasks by directly augmenting the data from other tasks. The degree of augmentation depends on the task relatedness and is estimated directly from the data. We apply the model on three diverse real-world data sets (healthcare data, handwritten digi...
Deep learning is becoming a fundamental piece in the paradigm shift from evidence-based to data-base...
Multi-task learning solves multiple related learning problems simultaneously by sharing some common ...
In the medical domain, data are often collected over time, evolving from simple to refined categorie...
Traditionally, machine learning research has adopted methods that were designed to learn one or a se...
Learning from small number of examples is a challenging problem in machine learning. An effective wa...
Abstract Multi-task learning approaches have shown significant improvements in different fields by t...
Multi-task learning approaches have shown significant improvements in different fields by training d...
Multi-task learning approaches have shown significant improvements in different fields by training d...
Deep learning is becoming a fundamental piece in the paradigm shift from evidence-based to data-base...
Multi-task learning has increased in importance due to its superior performance by learning multiple...
An important problem in statisti al ma hine learning is how to ee tively model the predi tions of mu...
Prediction of patient outcomes is critical to plan resources in an hospital emergency department. We...
abstract: In many fields one needs to build predictive models for a set of related machine learning ...
The related problems of transfer learning and multitask learning have attracted significant attentio...
Although recent multi-task learning methods have shown to be effective in improving the generalizati...
Deep learning is becoming a fundamental piece in the paradigm shift from evidence-based to data-base...
Multi-task learning solves multiple related learning problems simultaneously by sharing some common ...
In the medical domain, data are often collected over time, evolving from simple to refined categorie...
Traditionally, machine learning research has adopted methods that were designed to learn one or a se...
Learning from small number of examples is a challenging problem in machine learning. An effective wa...
Abstract Multi-task learning approaches have shown significant improvements in different fields by t...
Multi-task learning approaches have shown significant improvements in different fields by training d...
Multi-task learning approaches have shown significant improvements in different fields by training d...
Deep learning is becoming a fundamental piece in the paradigm shift from evidence-based to data-base...
Multi-task learning has increased in importance due to its superior performance by learning multiple...
An important problem in statisti al ma hine learning is how to ee tively model the predi tions of mu...
Prediction of patient outcomes is critical to plan resources in an hospital emergency department. We...
abstract: In many fields one needs to build predictive models for a set of related machine learning ...
The related problems of transfer learning and multitask learning have attracted significant attentio...
Although recent multi-task learning methods have shown to be effective in improving the generalizati...
Deep learning is becoming a fundamental piece in the paradigm shift from evidence-based to data-base...
Multi-task learning solves multiple related learning problems simultaneously by sharing some common ...
In the medical domain, data are often collected over time, evolving from simple to refined categorie...