In this paper, we propose the use of data symmetries, in the sense of equivalences under signal transformations, as priors for learning symmetry-adapted data representations, i.e., representations that are equivariant to these transformations. We rely on a group-theoretic definition of equivariance and provide conditions for enforcing a learned representation, for example the weights in a neural network layer or the atoms in a dictionary, to have the structure of a group and specifically the group structure in the distribution of the input. By reducing the analysis of generic group symmetries to permutation symmetries, we devise a regularization scheme for representation learning algorithm, using an unlabeled training set. The proposed regu...
In recent years the use of convolutional layers to encode an inductive bias (translational equivaria...
The chief difficulty in object recognition is that objects ’ classes are obscured by a large number ...
This paper investigates the effects of introducing symmetries into feedforward neural networks in wh...
The properties of a representation, such as smoothness, adaptability, generality, equivari- ance/inv...
Incorporating symmetries can lead to highly data-efficient and generalizable models by defining equi...
Representation learning is fundamental to many machine learning techniques, perhaps even more so in ...
Treating neural network inputs and outputs as random variables, we characterize the structure of neu...
This thesis is about adaptive invariance, and a new model of it: the Group Representation Network. W...
The problem of detecting and quantifying the presence of symmetries in datasets is useful for model ...
What are the symmetries of a dataset? Whereas the symmetries of an individual data element can be ch...
Understanding the role of symmetry in the physical sciences is critical for choosing an appropriate ...
Symmetry transformations induce invariances which are frequently described with deep latent variable...
Symmetries built into a neural network have appeared to be very beneficial for a wide range of tasks...
One of the central tools developed by M. Minsky and S. Papert (1988) was the group invariance theore...
In recent years the use of convolutional layers to encode an inductive bias (translational equivaria...
In recent years the use of convolutional layers to encode an inductive bias (translational equivaria...
The chief difficulty in object recognition is that objects ’ classes are obscured by a large number ...
This paper investigates the effects of introducing symmetries into feedforward neural networks in wh...
The properties of a representation, such as smoothness, adaptability, generality, equivari- ance/inv...
Incorporating symmetries can lead to highly data-efficient and generalizable models by defining equi...
Representation learning is fundamental to many machine learning techniques, perhaps even more so in ...
Treating neural network inputs and outputs as random variables, we characterize the structure of neu...
This thesis is about adaptive invariance, and a new model of it: the Group Representation Network. W...
The problem of detecting and quantifying the presence of symmetries in datasets is useful for model ...
What are the symmetries of a dataset? Whereas the symmetries of an individual data element can be ch...
Understanding the role of symmetry in the physical sciences is critical for choosing an appropriate ...
Symmetry transformations induce invariances which are frequently described with deep latent variable...
Symmetries built into a neural network have appeared to be very beneficial for a wide range of tasks...
One of the central tools developed by M. Minsky and S. Papert (1988) was the group invariance theore...
In recent years the use of convolutional layers to encode an inductive bias (translational equivaria...
In recent years the use of convolutional layers to encode an inductive bias (translational equivaria...
The chief difficulty in object recognition is that objects ’ classes are obscured by a large number ...
This paper investigates the effects of introducing symmetries into feedforward neural networks in wh...