It is often said that a deep learning model is "invariant" to some specific type of transformation. However, what is meant by this statement strongly depends on the context in which it is made. In this paper we explore the nature of invariance and equivariance of deep learning models with the goal of better understanding the ways in which they actually capture these concepts on a formal level. We introduce a family of invariance and equivariance metrics that allows us to quantify these properties in a way that disentangles them from other metrics such as loss or accuracy. We use our metrics to better understand the two most popular methods used to build invariance into networks: data augmentation and equivariant layers. We draw a range of c...
Across scientific and engineering disciplines, the algorithmic pipeline forprocessing and understand...
Equivariances provide useful inductive biases in neural network modeling, with the translation equiv...
Symmetry is a fundamental tool in the exploration of a broad range of complex systems. In machine le...
Designing learning systems which are invariant to certain data transformations is critical in machin...
Aside from developing methods to embed the equivariant priors into the architectures, one can also s...
Machine learning is concerned with computer systems that learn from data instead of being explicitly...
We contribute to the study of the quality of learned representations. In many domains, an important ...
For many pattern recognition tasks, the ideal input feature would be invariant to multiple confoundi...
Generalization and invariance are two essential properties of any machine learning model. Generaliza...
An evaluation criterion for safe and trustworthy deep learning is how well the invariances captured ...
In this paper, we investigate properties and limitations of invariance learned by neural networks fr...
Currently there exists rather promising new trend in machine leaning (ML) based on the relationship ...
In recent years Deep Neural Networks (DNNs) have achieved state-of-the-art results in many fields su...
Assumptions about invariances or symmetries in data can significantly increase the predictive power ...
In this thesis, Invariance in Deep Representations, we propose novel solutions to the problem of lea...
Across scientific and engineering disciplines, the algorithmic pipeline forprocessing and understand...
Equivariances provide useful inductive biases in neural network modeling, with the translation equiv...
Symmetry is a fundamental tool in the exploration of a broad range of complex systems. In machine le...
Designing learning systems which are invariant to certain data transformations is critical in machin...
Aside from developing methods to embed the equivariant priors into the architectures, one can also s...
Machine learning is concerned with computer systems that learn from data instead of being explicitly...
We contribute to the study of the quality of learned representations. In many domains, an important ...
For many pattern recognition tasks, the ideal input feature would be invariant to multiple confoundi...
Generalization and invariance are two essential properties of any machine learning model. Generaliza...
An evaluation criterion for safe and trustworthy deep learning is how well the invariances captured ...
In this paper, we investigate properties and limitations of invariance learned by neural networks fr...
Currently there exists rather promising new trend in machine leaning (ML) based on the relationship ...
In recent years Deep Neural Networks (DNNs) have achieved state-of-the-art results in many fields su...
Assumptions about invariances or symmetries in data can significantly increase the predictive power ...
In this thesis, Invariance in Deep Representations, we propose novel solutions to the problem of lea...
Across scientific and engineering disciplines, the algorithmic pipeline forprocessing and understand...
Equivariances provide useful inductive biases in neural network modeling, with the translation equiv...
Symmetry is a fundamental tool in the exploration of a broad range of complex systems. In machine le...