An autoencoder network uses a set of recognition weights to convert an input vector into a code vector. It then uses a set of generative weights to convert the code vector into an approximate reconstruction of the input vector. We derive an objective function for training autoencoders based on the Minimum Description Length (MDL) principle. The aim is to minimize the information required to describe both the code vector and the reconstruction error. We show that this information is minimized by choosing code vectors stochastically according to a Boltzmann distri-bution, where the generative weights define the energy of each possible code vector given the input vector. Unfortunately, if the code vectors use distributed representations, it is...
In the Minimum Description Length (MDL) principle, learning from the data is equivalent to an optima...
We introduce a deep, generative autoencoder ca-pable of learning hierarchies of distributed rep-rese...
Low-complexity coding and decoding (Lococode), a novel approach to sensory coding, trains autoassoci...
An autoencoder network uses a set of recognition weights to convert an input vector into a code vect...
The Minimum Description Length principle (MDL) can be used to train the hidden units of a neural net...
The minimum description length (MDL) principle can be used to train the hidden units of a neural net...
The autoencoder concept has fostered the reinterpretation and the design of modern communication sys...
Autoencoders are data-specific compression algorithms learned automatically from examples. The predo...
The main objective of an auto-encoder is to reconstruct the input signals via a feature representati...
Optimal transport offers an alternative to maximum likelihood for learning generative autoencoding m...
We present in this paper a novel approach for training deterministic auto-encoders. We show that by ...
Despite the recent progress in machine learning and deep learning, unsupervised learning still remai...
In the Minimum Description Length (MDL) principle, learning from the data is equivalent to an optima...
We show that training common regularized autoencoders resembles clustering, because it amounts to fi...
International audienceThe Minimum Description Length principle (MDL) is a formalization of Occam's r...
In the Minimum Description Length (MDL) principle, learning from the data is equivalent to an optima...
We introduce a deep, generative autoencoder ca-pable of learning hierarchies of distributed rep-rese...
Low-complexity coding and decoding (Lococode), a novel approach to sensory coding, trains autoassoci...
An autoencoder network uses a set of recognition weights to convert an input vector into a code vect...
The Minimum Description Length principle (MDL) can be used to train the hidden units of a neural net...
The minimum description length (MDL) principle can be used to train the hidden units of a neural net...
The autoencoder concept has fostered the reinterpretation and the design of modern communication sys...
Autoencoders are data-specific compression algorithms learned automatically from examples. The predo...
The main objective of an auto-encoder is to reconstruct the input signals via a feature representati...
Optimal transport offers an alternative to maximum likelihood for learning generative autoencoding m...
We present in this paper a novel approach for training deterministic auto-encoders. We show that by ...
Despite the recent progress in machine learning and deep learning, unsupervised learning still remai...
In the Minimum Description Length (MDL) principle, learning from the data is equivalent to an optima...
We show that training common regularized autoencoders resembles clustering, because it amounts to fi...
International audienceThe Minimum Description Length principle (MDL) is a formalization of Occam's r...
In the Minimum Description Length (MDL) principle, learning from the data is equivalent to an optima...
We introduce a deep, generative autoencoder ca-pable of learning hierarchies of distributed rep-rese...
Low-complexity coding and decoding (Lococode), a novel approach to sensory coding, trains autoassoci...