The following contains the four datasets described in the paper: Interpretable Geometric Deep Learning via Learnable Randomness Injection, and the associated code can be found at https://github.com/Graph-COM/LRI. Paper abstract Point cloud data is ubiquitous in scientific fields. Recently, geometric deep learning (GDL) has been widely applied to solve prediction tasks with such data. However, GDL models are often complicated and hardly interpretable, which poses concerns to scientists when deploying these models in scientific analysis and experiments. This work proposes a general mechanism named learnable randomness injection (LRI), which allows building inherently interpretable models based on general GDL backbones. LRI-induced models, o...
Deep learning methods have achieved great success in analyzing traditional data such as texts, sound...
Several problems in stochastic analysis are defined through their geometry, and preserving that geom...
In machine learning frequently the data appear in the form of graphs. Biological systems modelling, ...
In this dissertation, we explore the impact of geometry and topology on the capabilities of deep lea...
Geometric deep learning (GDL) has gained significant attention in various scientific fields, chiefly...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
The class of geometrical data is an interesting class as one encounters them in real world applicati...
Experimental physicists explore the fundamental nature of the universe by probing the properties of ...
Deep generative models have de facto emerged as state of the art when it comes to density estimation...
Geometric deep learning (GDL) is based on neural network architectures that incorporate and process ...
While deep learning has been successfully applied to many tasks in computer graphics and vision, sta...
Renormalization group (RG) methods, which model the way in which the effec-tive behavior of a system...
An important feature of many problem domains in machine learning is their geometry. For example, adj...
This thesis proposes an introduction to the fundamental concepts of supervised deep learning. Starti...
This paper deals with the geometric multi-model fitting from noisy, unstructured point set data (e.g...
Deep learning methods have achieved great success in analyzing traditional data such as texts, sound...
Several problems in stochastic analysis are defined through their geometry, and preserving that geom...
In machine learning frequently the data appear in the form of graphs. Biological systems modelling, ...
In this dissertation, we explore the impact of geometry and topology on the capabilities of deep lea...
Geometric deep learning (GDL) has gained significant attention in various scientific fields, chiefly...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
The class of geometrical data is an interesting class as one encounters them in real world applicati...
Experimental physicists explore the fundamental nature of the universe by probing the properties of ...
Deep generative models have de facto emerged as state of the art when it comes to density estimation...
Geometric deep learning (GDL) is based on neural network architectures that incorporate and process ...
While deep learning has been successfully applied to many tasks in computer graphics and vision, sta...
Renormalization group (RG) methods, which model the way in which the effec-tive behavior of a system...
An important feature of many problem domains in machine learning is their geometry. For example, adj...
This thesis proposes an introduction to the fundamental concepts of supervised deep learning. Starti...
This paper deals with the geometric multi-model fitting from noisy, unstructured point set data (e.g...
Deep learning methods have achieved great success in analyzing traditional data such as texts, sound...
Several problems in stochastic analysis are defined through their geometry, and preserving that geom...
In machine learning frequently the data appear in the form of graphs. Biological systems modelling, ...