Low-Rank Robust Online Distance/Similarity Learning based on the Rescaled Hinge Loss

An important challenge in metric learning is scalability to both size and dimension of input data. Online metric learning algorithms are proposed to address this challenge. Existing methods are commonly based on (Passive Aggressive) PA approach. Hence, they can rapidly process large volumes of data...

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Bibliographic Details
Main Authors: Zabihzadeh, Davood, Tuama, Amar, Karami-Mollaee, Ali
Format: Article in Journal/Newspaper
Language:unknown
Published: arXiv 2020
Subjects:
DML
Online Access:https://dx.doi.org/10.48550/arxiv.2010.03268
https://arxiv.org/abs/2010.03268
id ftdatacite:10.48550/arxiv.2010.03268
record_format openpolar
spelling ftdatacite:10.48550/arxiv.2010.03268 2023-05-15T16:01:48+02:00 Low-Rank Robust Online Distance/Similarity Learning based on the Rescaled Hinge Loss Zabihzadeh, Davood Tuama, Amar Karami-Mollaee, Ali 2020 https://dx.doi.org/10.48550/arxiv.2010.03268 https://arxiv.org/abs/2010.03268 unknown arXiv arXiv.org perpetual, non-exclusive license http://arxiv.org/licenses/nonexclusive-distrib/1.0/ Machine Learning cs.LG Computer Vision and Pattern Recognition cs.CV Machine Learning stat.ML FOS Computer and information sciences I.5.0 68T05 Article CreativeWork article Preprint 2020 ftdatacite https://doi.org/10.48550/arxiv.2010.03268 2022-03-10T15:06:02Z An important challenge in metric learning is scalability to both size and dimension of input data. Online metric learning algorithms are proposed to address this challenge. Existing methods are commonly based on (Passive Aggressive) PA approach. Hence, they can rapidly process large volumes of data with an adaptive learning rate. However, these algorithms are based on the Hinge loss and so are not robust against outliers and label noise. Also, existing online methods usually assume training triplets or pairwise constraints are exist in advance. However, many datasets in real-world applications are in the form of input data and their associated labels. We address these challenges by formulating the online Distance-Similarity learning problem with the robust Rescaled hinge loss function. The proposed model is rather general and can be applied to any PA-based online Distance-Similarity algorithm. Also, we develop an efficient robust one-pass triplet construction algorithm. Finally, to provide scalability in high dimensional DML environments, the low-rank version of the proposed methods is presented that not only reduces the computational cost significantly but also keeps the predictive performance of the learned metrics. Also, it provides a straightforward extension of our methods for deep Distance-Similarity learning. We conduct several experiments on datasets from various applications. The results confirm that the proposed methods significantly outperform state-of-the-art online DML methods in the presence of label noise and outliers by a large margin. : An Online Distance-Similarity learning approach in noisy environment Article in Journal/Newspaper DML DataCite Metadata Store (German National Library of Science and Technology) Triplets ENVELOPE(-59.750,-59.750,-62.383,-62.383)
institution Open Polar
collection DataCite Metadata Store (German National Library of Science and Technology)
op_collection_id ftdatacite
language unknown
topic Machine Learning cs.LG
Computer Vision and Pattern Recognition cs.CV
Machine Learning stat.ML
FOS Computer and information sciences
I.5.0
68T05
spellingShingle Machine Learning cs.LG
Computer Vision and Pattern Recognition cs.CV
Machine Learning stat.ML
FOS Computer and information sciences
I.5.0
68T05
Zabihzadeh, Davood
Tuama, Amar
Karami-Mollaee, Ali
Low-Rank Robust Online Distance/Similarity Learning based on the Rescaled Hinge Loss
topic_facet Machine Learning cs.LG
Computer Vision and Pattern Recognition cs.CV
Machine Learning stat.ML
FOS Computer and information sciences
I.5.0
68T05
description An important challenge in metric learning is scalability to both size and dimension of input data. Online metric learning algorithms are proposed to address this challenge. Existing methods are commonly based on (Passive Aggressive) PA approach. Hence, they can rapidly process large volumes of data with an adaptive learning rate. However, these algorithms are based on the Hinge loss and so are not robust against outliers and label noise. Also, existing online methods usually assume training triplets or pairwise constraints are exist in advance. However, many datasets in real-world applications are in the form of input data and their associated labels. We address these challenges by formulating the online Distance-Similarity learning problem with the robust Rescaled hinge loss function. The proposed model is rather general and can be applied to any PA-based online Distance-Similarity algorithm. Also, we develop an efficient robust one-pass triplet construction algorithm. Finally, to provide scalability in high dimensional DML environments, the low-rank version of the proposed methods is presented that not only reduces the computational cost significantly but also keeps the predictive performance of the learned metrics. Also, it provides a straightforward extension of our methods for deep Distance-Similarity learning. We conduct several experiments on datasets from various applications. The results confirm that the proposed methods significantly outperform state-of-the-art online DML methods in the presence of label noise and outliers by a large margin. : An Online Distance-Similarity learning approach in noisy environment
format Article in Journal/Newspaper
author Zabihzadeh, Davood
Tuama, Amar
Karami-Mollaee, Ali
author_facet Zabihzadeh, Davood
Tuama, Amar
Karami-Mollaee, Ali
author_sort Zabihzadeh, Davood
title Low-Rank Robust Online Distance/Similarity Learning based on the Rescaled Hinge Loss
title_short Low-Rank Robust Online Distance/Similarity Learning based on the Rescaled Hinge Loss
title_full Low-Rank Robust Online Distance/Similarity Learning based on the Rescaled Hinge Loss
title_fullStr Low-Rank Robust Online Distance/Similarity Learning based on the Rescaled Hinge Loss
title_full_unstemmed Low-Rank Robust Online Distance/Similarity Learning based on the Rescaled Hinge Loss
title_sort low-rank robust online distance/similarity learning based on the rescaled hinge loss
publisher arXiv
publishDate 2020
url https://dx.doi.org/10.48550/arxiv.2010.03268
https://arxiv.org/abs/2010.03268
long_lat ENVELOPE(-59.750,-59.750,-62.383,-62.383)
geographic Triplets
geographic_facet Triplets
genre DML
genre_facet DML
op_rights arXiv.org perpetual, non-exclusive license
http://arxiv.org/licenses/nonexclusive-distrib/1.0/
op_doi https://doi.org/10.48550/arxiv.2010.03268
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