Temporal Autoencoding Restricted Boltzmann Machine

10/31/2012
by   Chris Häusler, et al.
0

Much work has been done refining and characterizing the receptive fields learned by deep learning algorithms. A lot of this work has focused on the development of Gabor-like filters learned when enforcing sparsity constraints on a natural image dataset. Little work however has investigated how these filters might expand to the temporal domain, namely through training on natural movies. Here we investigate exactly this problem in established temporal deep learning algorithms as well as a new learning paradigm suggested here, the Temporal Autoencoding Restricted Boltzmann Machine (TARBM).

READ FULL TEXT

page 5

page 7

page 8

research
08/28/2018

Learning Discriminative Representation with Signed Laplacian Restricted Boltzmann Machine

We investigate the potential of a restricted Boltzmann Machine (RBM) for...
research
04/24/2016

Rotation-Invariant Restricted Boltzmann Machine Using Shared Gradient Filters

Finding suitable features has been an essential problem in computer visi...
research
06/19/2018

Restricted Boltzmann Machines: Introduction and Review

The restricted Boltzmann machine is a network of stochastic units with u...
research
11/20/2020

Graph Signal Recovery Using Restricted Boltzmann Machines

We propose a model-agnostic pipeline to recover graph signals from an ex...
research
09/07/2016

Learning Boltzmann Machine with EM-like Method

We propose an expectation-maximization-like(EMlike) method to train Bolt...
research
04/30/2019

Restricted Boltzmann Machine Assignment Algorithm: Application to solve many-to-one matching problems on weighted bipartite graph

In this work an iterative algorithm based on unsupervised learning is pr...
research
02/18/2019

Learning Compositional Representations of Interacting Systems with Restricted Boltzmann Machines: Comparative Study of Lattice Proteins

A Restricted Boltzmann Machine (RBM) is an unsupervised machine-learning...

Please sign up or login with your details

Forgot password? Click here to reset