Training deep learning models for time-series prediction of a target population often requires a substantial amount of training data, which may not be readily available. This work addresses the challenge of leveraging multiple related sources of time series data in the same feature space to improve the prediction performance of a deep learning model for a target population. Specifically, we focus on a scenario where the target dataset, representing the desired target population, is underrepresented, while the source datasets consist of mismatched populations that are sufficiently representative for training a deep learning model. In this study, we explore state-of-the-art techniques, including transfer learning, ensemble learning, and domai...
One of the fundamental assumptions of machine learning is that learnt models are applied to data th...
With deep learning being leveraged more regularly in the field of image classification, particularly...
Deep learning-based support systems have demonstrated encouraging results in numerous clinical appli...
In the real world, data used to build machine learning models always has different sizes and charact...
International audienceTransfer learning for deep neural networks is the process of first training a ...
Background Prognostic models that are accurate could help aid medical decision making. Large observ...
Manufacturers are struggling to use data from multiple products production lines to predict rare eve...
Population genetics is transitioning into a data-driven discipline thanks to the availability of lar...
Deep learning (DL) methods have in recent years yielded impressive results in medical imaging, with ...
Deep learning algorithms have shown remarkable performance in classification tasks, however, they ty...
Deep learning models are known to be powerful image classifiers and have demonstrated excellent perf...
<p>We evaluate the results in three ways, using the relative error of the estimates: |<i>N</i><sub>e...
Real-world machine learning deployments are characterized by mismatches between the source (training...
International audienceDeep learning models specifically CNNs have been used successfully in many tas...
Ensemble multifeatured deep learning methodology has emerged as a powerful approach to overcome the ...
One of the fundamental assumptions of machine learning is that learnt models are applied to data th...
With deep learning being leveraged more regularly in the field of image classification, particularly...
Deep learning-based support systems have demonstrated encouraging results in numerous clinical appli...
In the real world, data used to build machine learning models always has different sizes and charact...
International audienceTransfer learning for deep neural networks is the process of first training a ...
Background Prognostic models that are accurate could help aid medical decision making. Large observ...
Manufacturers are struggling to use data from multiple products production lines to predict rare eve...
Population genetics is transitioning into a data-driven discipline thanks to the availability of lar...
Deep learning (DL) methods have in recent years yielded impressive results in medical imaging, with ...
Deep learning algorithms have shown remarkable performance in classification tasks, however, they ty...
Deep learning models are known to be powerful image classifiers and have demonstrated excellent perf...
<p>We evaluate the results in three ways, using the relative error of the estimates: |<i>N</i><sub>e...
Real-world machine learning deployments are characterized by mismatches between the source (training...
International audienceDeep learning models specifically CNNs have been used successfully in many tas...
Ensemble multifeatured deep learning methodology has emerged as a powerful approach to overcome the ...
One of the fundamental assumptions of machine learning is that learnt models are applied to data th...
With deep learning being leveraged more regularly in the field of image classification, particularly...
Deep learning-based support systems have demonstrated encouraging results in numerous clinical appli...