Time series data is often composed of information at multiple time scales, particularly in biomedical data. While numerous deep learning strategies exist to capture this information, many make networks larger, require more data, are more demanding to compute, and are difficult to interpret. This limits their usefulness in real-world applications facing even modest computational or data constraints and can further complicate their translation into practice. We present a minimal, computationally efficient Time Scale Network combining the translation and dilation sequence used in discrete wavelet transforms with traditional convolutional neural networks and back-propagation. The network simultaneously learns features at many time scales for se...
A neural network that matches with a complex data function is likely to boost the classification per...
Artificial intelligence has made great progress in medical data analysis, but the lack of robustness...
Deep neural networks can be used for abstraction and as a preprocessing step for other machine learn...
We study scaling convolutional neural networks (CNNs), specifically targeting Residual neural networ...
The automatic and unsupervised analysis of biomedical time series is of primary importance for diagn...
Deep Learning methods have shown suitability for time series classification in the health and medica...
Atrial fibrillation (AF) is the most common cardiac arrhythmia and associated with a higher risk for...
Analyzing time series data like EEG or MEG is challenging due to noisy, high-dimensional, and patien...
Magnetoencephalography (MEG) recordings of patients with epilepsy exhibit spikes, a typical biomarke...
This thesis investigates and develops methods to enable ubiquitous monitoring of the most examined c...
Through recent advances in wearable medical devices and subsequent explosion of biological data, dee...
Signal measurements appearing in the form of time series are one of the most common types of data us...
Neural Architecture Search (NAS) is quickly becoming the go-to approach to optimize the structure of...
Arrhythmia classification is a prominent research problem due to the computational complexities of l...
Electrocardiograms (ECGs) can be considered a viable method for cardiovascular disease (CVD) diagnos...
A neural network that matches with a complex data function is likely to boost the classification per...
Artificial intelligence has made great progress in medical data analysis, but the lack of robustness...
Deep neural networks can be used for abstraction and as a preprocessing step for other machine learn...
We study scaling convolutional neural networks (CNNs), specifically targeting Residual neural networ...
The automatic and unsupervised analysis of biomedical time series is of primary importance for diagn...
Deep Learning methods have shown suitability for time series classification in the health and medica...
Atrial fibrillation (AF) is the most common cardiac arrhythmia and associated with a higher risk for...
Analyzing time series data like EEG or MEG is challenging due to noisy, high-dimensional, and patien...
Magnetoencephalography (MEG) recordings of patients with epilepsy exhibit spikes, a typical biomarke...
This thesis investigates and develops methods to enable ubiquitous monitoring of the most examined c...
Through recent advances in wearable medical devices and subsequent explosion of biological data, dee...
Signal measurements appearing in the form of time series are one of the most common types of data us...
Neural Architecture Search (NAS) is quickly becoming the go-to approach to optimize the structure of...
Arrhythmia classification is a prominent research problem due to the computational complexities of l...
Electrocardiograms (ECGs) can be considered a viable method for cardiovascular disease (CVD) diagnos...
A neural network that matches with a complex data function is likely to boost the classification per...
Artificial intelligence has made great progress in medical data analysis, but the lack of robustness...
Deep neural networks can be used for abstraction and as a preprocessing step for other machine learn...