Abstract: We investigate the structure of the loss function landscape for neural networks subject to dataset mislabelling, increased training set diversity, and reduced node connectivity, using various techniques developed for energy landscape exploration. The benchmarking models are classification problems for atomic geometry optimisation and hand-written digit prediction. We consider the effect of varying the size of the atomic configuration space used to generate initial geometries and find that the number of stationary points increases rapidly with the size of the training configuration space. We introduce a measure of node locality to limit network connectivity and perturb permutational weight symmetry, and examine how this parameter a...
International audienceDeep learning has been immensely successful at a variety of tasks, ranging fro...
International audienceDeep learning has been immensely successful at a variety of tasks, ranging fro...
International audienceDeep learning has been immensely successful at a variety of tasks, ranging fro...
Abstract: We investigate the structure of the loss function landscape for neural networks subject to...
Abstract We investigate the structure of the loss function landscape for neural netwo...
Training an artificial neural network involves an optimization process over the landscape defined by...
Recent work has established clear links between the generalization performance of trained neural net...
Recent work has established clear links between the generalization performance of trained neural net...
The success of deep learning has revealed the application potential of neural networks across the sc...
Methods developed to explore and characterise potential energy landscapes are applied to the corresp...
The success of deep learning has revealed the application potential of neural networks across the sc...
This paper empirically studies commonly observed training difficulties of Physics-Informed Neural Ne...
International audienceDeep learning has been immensely successful at a variety of tasks, ranging fro...
One of the most common metrics to evaluate neural network classifiers is the area under the receive...
International audienceDeep learning has been immensely successful at a variety of tasks, ranging fro...
International audienceDeep learning has been immensely successful at a variety of tasks, ranging fro...
International audienceDeep learning has been immensely successful at a variety of tasks, ranging fro...
International audienceDeep learning has been immensely successful at a variety of tasks, ranging fro...
Abstract: We investigate the structure of the loss function landscape for neural networks subject to...
Abstract We investigate the structure of the loss function landscape for neural netwo...
Training an artificial neural network involves an optimization process over the landscape defined by...
Recent work has established clear links between the generalization performance of trained neural net...
Recent work has established clear links between the generalization performance of trained neural net...
The success of deep learning has revealed the application potential of neural networks across the sc...
Methods developed to explore and characterise potential energy landscapes are applied to the corresp...
The success of deep learning has revealed the application potential of neural networks across the sc...
This paper empirically studies commonly observed training difficulties of Physics-Informed Neural Ne...
International audienceDeep learning has been immensely successful at a variety of tasks, ranging fro...
One of the most common metrics to evaluate neural network classifiers is the area under the receive...
International audienceDeep learning has been immensely successful at a variety of tasks, ranging fro...
International audienceDeep learning has been immensely successful at a variety of tasks, ranging fro...
International audienceDeep learning has been immensely successful at a variety of tasks, ranging fro...
International audienceDeep learning has been immensely successful at a variety of tasks, ranging fro...