The use of theory-based knowledge in machine learning models has a major impact on many engineering and physics problems. The growth of deep learning algorithms is closely related to an increasing demand for data that is not acceptable or available in many use cases. In this context, the incorporation of physical knowledge or a priori constraints has proven beneficial in many tasks. On the other hand, this collection of approaches is context-specific, and it is difficult to generalize them to new problems. In this paper, we experimentally compare some of the most commonly used theory-injection strategies to perform a systematic analysis of their advantages. Selected state-of-the art algorithms were reproduced for different use cases ...
Deep learning is an undeniably hot topic, not only within both academia and industry, but also among...
Deep learning is an emerging area of machine learning (ML). It comprises multiple hidden layers of a...
Deep learning has long been criticised as a black-box model for lacking sound theoretical explanatio...
The use of theory-based knowledge in machine learning models has a major impact on many engineering ...
The enrichment of machine learning models with domain knowledge has a growing impact on modern engin...
Pattern recognition has its origins in engineering while machine learning developed from computer sc...
Machine learning, and most notably deep neural networks, have seen unprecedented success in recent y...
Experimental physicists explore the fundamental nature of the universe by probing the properties of ...
There has been a lot of recent interest in adopting machine learning methods for scientific and engi...
Machine Learning (ML) has been a transformative technology in society by automating otherwise diffic...
Machine learning, and the sub-field of deep learning in particular, has experienced an explosion in ...
Deep learning (DL) is currently the largest area of research within artificial intelligence (AI). T...
This thesis explores fundamental improvements in unsupervised deep learning algorithms. Taking a the...
Nowadays, the most revolutionary area in computer science is deep learning algorithms and models. Th...
Deep learning is a form of machine learning that enables computers to learn from experience and unde...
Deep learning is an undeniably hot topic, not only within both academia and industry, but also among...
Deep learning is an emerging area of machine learning (ML). It comprises multiple hidden layers of a...
Deep learning has long been criticised as a black-box model for lacking sound theoretical explanatio...
The use of theory-based knowledge in machine learning models has a major impact on many engineering ...
The enrichment of machine learning models with domain knowledge has a growing impact on modern engin...
Pattern recognition has its origins in engineering while machine learning developed from computer sc...
Machine learning, and most notably deep neural networks, have seen unprecedented success in recent y...
Experimental physicists explore the fundamental nature of the universe by probing the properties of ...
There has been a lot of recent interest in adopting machine learning methods for scientific and engi...
Machine Learning (ML) has been a transformative technology in society by automating otherwise diffic...
Machine learning, and the sub-field of deep learning in particular, has experienced an explosion in ...
Deep learning (DL) is currently the largest area of research within artificial intelligence (AI). T...
This thesis explores fundamental improvements in unsupervised deep learning algorithms. Taking a the...
Nowadays, the most revolutionary area in computer science is deep learning algorithms and models. Th...
Deep learning is a form of machine learning that enables computers to learn from experience and unde...
Deep learning is an undeniably hot topic, not only within both academia and industry, but also among...
Deep learning is an emerging area of machine learning (ML). It comprises multiple hidden layers of a...
Deep learning has long been criticised as a black-box model for lacking sound theoretical explanatio...