We study the problem of learning from data representations that are invariant to transformations, and at the same time selective, in the sense that two points have the same representation if one is the transformation of the other. The mathematical results here sharpen some of the key claims of i-theory—a recent theory of feedforward processing in sensory cortex (Anselmi et al., 2013, Theor. Comput. Sci. and arXiv:1311.4158; Anselmi et al., 2013, Magic materials: a theory of deep hierarchical architectures for learning sensory representations. CBCL Paper; Anselmi & Poggio, 2010, Representation learning in sensory cortex: a theory. CBMM Memo No. 26).National Science Foundation (U.S.) (Award CCF-1231216
Representation learning algorithms offer the opportunity to learn invariant representations of the i...
Learning by temporal association rules such as Foldiak's trace rule is an attractive hypothesis that...
Unsupervised invariance learning of transformation sequences in a model of object recognition yields...
We discuss data representation which can be learned automatically from data, are invariant to transf...
Abstract Coding for visual stimuli in the ventral stream is known to be invariant to ...
We review and apply a computational theory of the feedforward path of the ventral stream in visual c...
The present phase of Machine Learning is characterized by supervised learning algorithms relying on ...
Is visual cortex made up of general-purpose information processing machinery, or does it consist of ...
In this thesis, Invariance in Deep Representations, we propose novel solutions to the problem of lea...
In this paper we present a class of algorithms for similarity learning on spaces of images. The gene...
A robust, fast and general method for estimation of object properties is proposed. It is based on a ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, 2...
This work introduces two novel kernel-based measures to enforce certain invariance properties in the...
Designing learning systems which are invariant to certain data transformations is critical in machin...
Visual object recognition is remarkably accurate and robust, yet its neurophysiological underpinning...
Representation learning algorithms offer the opportunity to learn invariant representations of the i...
Learning by temporal association rules such as Foldiak's trace rule is an attractive hypothesis that...
Unsupervised invariance learning of transformation sequences in a model of object recognition yields...
We discuss data representation which can be learned automatically from data, are invariant to transf...
Abstract Coding for visual stimuli in the ventral stream is known to be invariant to ...
We review and apply a computational theory of the feedforward path of the ventral stream in visual c...
The present phase of Machine Learning is characterized by supervised learning algorithms relying on ...
Is visual cortex made up of general-purpose information processing machinery, or does it consist of ...
In this thesis, Invariance in Deep Representations, we propose novel solutions to the problem of lea...
In this paper we present a class of algorithms for similarity learning on spaces of images. The gene...
A robust, fast and general method for estimation of object properties is proposed. It is based on a ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, 2...
This work introduces two novel kernel-based measures to enforce certain invariance properties in the...
Designing learning systems which are invariant to certain data transformations is critical in machin...
Visual object recognition is remarkably accurate and robust, yet its neurophysiological underpinning...
Representation learning algorithms offer the opportunity to learn invariant representations of the i...
Learning by temporal association rules such as Foldiak's trace rule is an attractive hypothesis that...
Unsupervised invariance learning of transformation sequences in a model of object recognition yields...