Deep Neural Maps

10/16/2018
by   Mehran Pesteie, et al.
0

We introduce a new unsupervised representation learning and visualization using deep convolutional networks and self organizing maps called Deep Neural Maps (DNM). DNM jointly learns an embedding of the input data and a mapping from the embedding space to a two-dimensional lattice. We compare visualizations of DNM with those of t-SNE and LLE on the MNIST and COIL-20 data sets. Our experiments show that the DNM can learn efficient representations of the input data, which reflects characteristics of each class. This is shown via back-projecting the neurons of the map on the data space.

READ FULL TEXT
research
11/05/2018

How deep is deep enough? - Optimizing deep neural network architecture

Deep neural networks use stacked layers of feature detectors to repeated...
research
08/18/2015

Scalable Out-of-Sample Extension of Graph Embeddings Using Deep Neural Networks

Several popular graph embedding techniques for representation learning a...
research
07/24/2017

Building Graph Representations of Deep Vector Embeddings

Patterns stored within pre-trained deep neural networks compose large an...
research
12/18/2013

SOMz: photometric redshift PDFs with self organizing maps and random atlas

In this paper we explore the applicability of the unsupervised machine l...
research
08/05/2020

Unsupervised seismic facies classification using deep convolutional autoencoder

With the increased size and complexity of seismic surveys, manual labeli...
research
08/14/2020

Supervised Topological Maps

Controlling the internal representation space of a neural network is a d...
research
09/05/2019

The homunculus for proprioception: Toward learning the representation of a humanoid robot's joint space using self-organizing maps

In primate brains, tactile and proprioceptive inputs are relayed to the ...

Please sign up or login with your details

Forgot password? Click here to reset