Energy-based models for supervised deep neural networks and their applications
Despite deep learning-based methods being the state-of-the-art in many AI-related applications, there is a lack of consensus of how to understand and interpret deep neural networks in order to reason about their strengths and weaknesses. Energy-based models in machine learning have a long tradition as a framework to learn from unlabeled data, i.e. unsupervised learning. The purpose of this project is to enrich our understanding of deep machine learning with the help of energy-based models, where we build on existing experience of relating feed-forward deep networks and EBMs.
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- Chalmers AI Research Centre (CHAIR) (Centre, Sweden)
- Chalmers AI Research Centre (Research Institute, Sweden)