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Cross-covariance based affinity for graphs

The accuracy of graph based learning techniques relies on the underlying topological structure and affinity between data points, which are assumed to lie on a smooth Riemannian manifold. However, the assumption of local linearity in a neighborhood does not always hold true. Hence, the Euclidean dist...

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Detalles Bibliográficos
Autores principales: Yadav, Rakesh Kumar, Abhishek, Verma, Shekhar, Venkatesan, S
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer US 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7677445/
https://www.ncbi.nlm.nih.gov/pubmed/34764570
http://dx.doi.org/10.1007/s10489-020-01986-9
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author Yadav, Rakesh Kumar
Abhishek
Verma, Shekhar
Venkatesan, S
author_facet Yadav, Rakesh Kumar
Abhishek
Verma, Shekhar
Venkatesan, S
author_sort Yadav, Rakesh Kumar
collection PubMed
description The accuracy of graph based learning techniques relies on the underlying topological structure and affinity between data points, which are assumed to lie on a smooth Riemannian manifold. However, the assumption of local linearity in a neighborhood does not always hold true. Hence, the Euclidean distance based affinity that determines the graph edges may fail to represent the true connectivity strength between data points. Moreover, the affinity between data points is influenced by the distribution of the data around them and must be considered in the affinity measure. In this paper, we propose two techniques, CCGA(L) and CCGA(N) that use cross-covariance based graph affinity (CCGA) to represent the relation between data points in a local region. CCGA(L) also explores the additional connectivity between data points which share a common local neighborhood. CCGA(N) considers the influence of respective neighborhoods of the two immediately connected data points, which further enhance the affinity measure. Experimental results of manifold learning on synthetic datasets show that CCGA is able to represent the affinity measure between data points more accurately. This results in better low dimensional representation. Manifold regularization experiments on standard image dataset further indicate that the proposed CCGA based affinity is able to accurately identify and include the influence of the data points and its common neighborhood that increase the classification accuracy. The proposed method outperforms the existing state-of-the-art manifold regularization methods by a significant margin.
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spelling pubmed-76774452020-11-20 Cross-covariance based affinity for graphs Yadav, Rakesh Kumar Abhishek Verma, Shekhar Venkatesan, S Appl Intell (Dordr) Article The accuracy of graph based learning techniques relies on the underlying topological structure and affinity between data points, which are assumed to lie on a smooth Riemannian manifold. However, the assumption of local linearity in a neighborhood does not always hold true. Hence, the Euclidean distance based affinity that determines the graph edges may fail to represent the true connectivity strength between data points. Moreover, the affinity between data points is influenced by the distribution of the data around them and must be considered in the affinity measure. In this paper, we propose two techniques, CCGA(L) and CCGA(N) that use cross-covariance based graph affinity (CCGA) to represent the relation between data points in a local region. CCGA(L) also explores the additional connectivity between data points which share a common local neighborhood. CCGA(N) considers the influence of respective neighborhoods of the two immediately connected data points, which further enhance the affinity measure. Experimental results of manifold learning on synthetic datasets show that CCGA is able to represent the affinity measure between data points more accurately. This results in better low dimensional representation. Manifold regularization experiments on standard image dataset further indicate that the proposed CCGA based affinity is able to accurately identify and include the influence of the data points and its common neighborhood that increase the classification accuracy. The proposed method outperforms the existing state-of-the-art manifold regularization methods by a significant margin. Springer US 2020-11-20 2021 /pmc/articles/PMC7677445/ /pubmed/34764570 http://dx.doi.org/10.1007/s10489-020-01986-9 Text en © Springer Science+Business Media, LLC, part of Springer Nature 2020 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Article
Yadav, Rakesh Kumar
Abhishek
Verma, Shekhar
Venkatesan, S
Cross-covariance based affinity for graphs
title Cross-covariance based affinity for graphs
title_full Cross-covariance based affinity for graphs
title_fullStr Cross-covariance based affinity for graphs
title_full_unstemmed Cross-covariance based affinity for graphs
title_short Cross-covariance based affinity for graphs
title_sort cross-covariance based affinity for graphs
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7677445/
https://www.ncbi.nlm.nih.gov/pubmed/34764570
http://dx.doi.org/10.1007/s10489-020-01986-9
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