Semi-Supervised Manifold Alignment Using Parallel Deep Autoencoders

The aim of manifold learning is to extract low-dimensional manifolds from high-dimensional data. Manifold alignment is a variant of manifold learning that uses two or more datasets that are assumed to represent different high-dimensional representations of the same underlying manifold. Manifold alig...

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Main Authors: Fayeem Aziz, Aaron S. W. Wong, Stephan Chalup
Format: Article
Language:English
Published: MDPI AG 2019-09-01
Series:Algorithms
Subjects:
Online Access:https://www.mdpi.com/1999-4893/12/9/186
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spelling doaj-117e89d1dba8482fb0221a29e340c0c82020-11-25T01:55:51ZengMDPI AGAlgorithms1999-48932019-09-0112918610.3390/a12090186a12090186Semi-Supervised Manifold Alignment Using Parallel Deep AutoencodersFayeem Aziz0Aaron S. W. Wong1Stephan Chalup2School of Electrical Engineering and Computing, The University of Newcastle, Callaghan, NSW 2308, Australia4Tel Pty. Ltd., Warabrook, NSW 2304, AustraliaSchool of Electrical Engineering and Computing, The University of Newcastle, Callaghan, NSW 2308, AustraliaThe aim of manifold learning is to extract low-dimensional manifolds from high-dimensional data. Manifold alignment is a variant of manifold learning that uses two or more datasets that are assumed to represent different high-dimensional representations of the same underlying manifold. Manifold alignment can be successful in detecting latent manifolds in cases where one version of the data alone is not sufficient to extract and establish a stable low-dimensional representation. The present study proposes a parallel deep autoencoder neural network architecture for manifold alignment and conducts a series of experiments using a protein-folding benchmark dataset and a suite of new datasets generated by simulating double-pendulum dynamics with underlying manifolds of dimensions 2, 3 and 4. The dimensionality and topological complexity of these latent manifolds are above those occurring in most previous studies. Our experimental results demonstrate that the parallel deep autoencoder performs in most cases better than the tested traditional methods of semi-supervised manifold alignment. We also show that the parallel deep autoencoder can process datasets of different input domains by aligning the manifolds extracted from kinematics parameters with those obtained from corresponding image data.https://www.mdpi.com/1999-4893/12/9/186deep autoencoderdimensionality reductionmanifold learning3-manifoldmachine learningmanifold alignmentautoencoderdeep neural networkdeep learningdouble pendulum
collection DOAJ
language English
format Article
sources DOAJ
author Fayeem Aziz
Aaron S. W. Wong
Stephan Chalup
spellingShingle Fayeem Aziz
Aaron S. W. Wong
Stephan Chalup
Semi-Supervised Manifold Alignment Using Parallel Deep Autoencoders
Algorithms
deep autoencoder
dimensionality reduction
manifold learning
3-manifold
machine learning
manifold alignment
autoencoder
deep neural network
deep learning
double pendulum
author_facet Fayeem Aziz
Aaron S. W. Wong
Stephan Chalup
author_sort Fayeem Aziz
title Semi-Supervised Manifold Alignment Using Parallel Deep Autoencoders
title_short Semi-Supervised Manifold Alignment Using Parallel Deep Autoencoders
title_full Semi-Supervised Manifold Alignment Using Parallel Deep Autoencoders
title_fullStr Semi-Supervised Manifold Alignment Using Parallel Deep Autoencoders
title_full_unstemmed Semi-Supervised Manifold Alignment Using Parallel Deep Autoencoders
title_sort semi-supervised manifold alignment using parallel deep autoencoders
publisher MDPI AG
series Algorithms
issn 1999-4893
publishDate 2019-09-01
description The aim of manifold learning is to extract low-dimensional manifolds from high-dimensional data. Manifold alignment is a variant of manifold learning that uses two or more datasets that are assumed to represent different high-dimensional representations of the same underlying manifold. Manifold alignment can be successful in detecting latent manifolds in cases where one version of the data alone is not sufficient to extract and establish a stable low-dimensional representation. The present study proposes a parallel deep autoencoder neural network architecture for manifold alignment and conducts a series of experiments using a protein-folding benchmark dataset and a suite of new datasets generated by simulating double-pendulum dynamics with underlying manifolds of dimensions 2, 3 and 4. The dimensionality and topological complexity of these latent manifolds are above those occurring in most previous studies. Our experimental results demonstrate that the parallel deep autoencoder performs in most cases better than the tested traditional methods of semi-supervised manifold alignment. We also show that the parallel deep autoencoder can process datasets of different input domains by aligning the manifolds extracted from kinematics parameters with those obtained from corresponding image data.
topic deep autoencoder
dimensionality reduction
manifold learning
3-manifold
machine learning
manifold alignment
autoencoder
deep neural network
deep learning
double pendulum
url https://www.mdpi.com/1999-4893/12/9/186
work_keys_str_mv AT fayeemaziz semisupervisedmanifoldalignmentusingparalleldeepautoencoders
AT aaronswwong semisupervisedmanifoldalignmentusingparalleldeepautoencoders
AT stephanchalup semisupervisedmanifoldalignmentusingparalleldeepautoencoders
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