Distributionally Robust Graph Learning From Smooth Signals Under Moment Uncertainty
We consider the problem of learning a graph from a finite set of noisy graph signal observations, the goal of which is to find a smooth representation of the graph signal. Such a problem is motivated by the desire to infer relational structure in large datasets and has been extensively studied in re...
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Veröffentlicht in: | IEEE transactions on signal processing 2022, Vol.70, p.6216-6231 |
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creator | Wang, Xiaolu Pun, Yuen-Man So, Anthony Man-Cho |
description | We consider the problem of learning a graph from a finite set of noisy graph signal observations, the goal of which is to find a smooth representation of the graph signal. Such a problem is motivated by the desire to infer relational structure in large datasets and has been extensively studied in recent years. Most existing approaches focus on learning a graph on which the observed signals are smooth. However, the learned graph is prone to overfitting, as it does not take the unobserved signals into account. To address this issue, we propose a novel graph learning model based on the distributionally robust optimization methodology, which aims to identify a graph that not only provides a smooth representation of but is also robust against uncertainties in the observed signals. On the statistics side, we establish out-of-sample performance guarantees for our proposed model. On the optimization side, we show that under a mild assumption on the graph signal distribution, our proposed model admits a smooth non-convex optimization formulation. We then develop a projected gradient method to tackle this formulation and establish its convergence guarantees. Our formulation provides a new perspective on regularization in the graph learning setting. Moreover, extensive numerical experiments on both synthetic and real-world data show that our model has comparable yet more robust performance across different populations of observed signals than existing models according to various metrics. |
doi_str_mv | 10.1109/TSP.2022.3229950 |
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Such a problem is motivated by the desire to infer relational structure in large datasets and has been extensively studied in recent years. Most existing approaches focus on learning a graph on which the observed signals are smooth. However, the learned graph is prone to overfitting, as it does not take the unobserved signals into account. To address this issue, we propose a novel graph learning model based on the distributionally robust optimization methodology, which aims to identify a graph that not only provides a smooth representation of but is also robust against uncertainties in the observed signals. On the statistics side, we establish out-of-sample performance guarantees for our proposed model. On the optimization side, we show that under a mild assumption on the graph signal distribution, our proposed model admits a smooth non-convex optimization formulation. We then develop a projected gradient method to tackle this formulation and establish its convergence guarantees. 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Moreover, extensive numerical experiments on both synthetic and real-world data show that our model has comparable yet more robust performance across different populations of observed signals than existing models according to various metrics.</description><identifier>ISSN: 1053-587X</identifier><identifier>EISSN: 1941-0476</identifier><identifier>DOI: 10.1109/TSP.2022.3229950</identifier><identifier>CODEN: ITPRED</identifier><language>eng</language><publisher>New York: IEEE</publisher><subject>Analytical models ; Convexity ; Data models ; distributionally robust optimization ; Graph learning ; graph signal processing ; Graphical representations ; Laplace equations ; Learning ; Minimization ; moment uncertainty ; network topology inference ; Optimization ; Regularization ; Robustness (mathematics) ; Signal distribution ; Topology ; Uncertainty</subject><ispartof>IEEE transactions on signal processing, 2022, Vol.70, p.6216-6231</ispartof><rights>Copyright The Institute of Electrical and Electronics Engineers, Inc. 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Such a problem is motivated by the desire to infer relational structure in large datasets and has been extensively studied in recent years. Most existing approaches focus on learning a graph on which the observed signals are smooth. However, the learned graph is prone to overfitting, as it does not take the unobserved signals into account. To address this issue, we propose a novel graph learning model based on the distributionally robust optimization methodology, which aims to identify a graph that not only provides a smooth representation of but is also robust against uncertainties in the observed signals. On the statistics side, we establish out-of-sample performance guarantees for our proposed model. On the optimization side, we show that under a mild assumption on the graph signal distribution, our proposed model admits a smooth non-convex optimization formulation. We then develop a projected gradient method to tackle this formulation and establish its convergence guarantees. 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Moreover, extensive numerical experiments on both synthetic and real-world data show that our model has comparable yet more robust performance across different populations of observed signals than existing models according to various metrics.</description><subject>Analytical models</subject><subject>Convexity</subject><subject>Data models</subject><subject>distributionally robust optimization</subject><subject>Graph learning</subject><subject>graph signal processing</subject><subject>Graphical representations</subject><subject>Laplace equations</subject><subject>Learning</subject><subject>Minimization</subject><subject>moment uncertainty</subject><subject>network topology inference</subject><subject>Optimization</subject><subject>Regularization</subject><subject>Robustness (mathematics)</subject><subject>Signal distribution</subject><subject>Topology</subject><subject>Uncertainty</subject><issn>1053-587X</issn><issn>1941-0476</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2022</creationdate><recordtype>article</recordtype><sourceid>RIE</sourceid><recordid>eNpNkDFPwzAQRiMEEqWwMzBYYk4527ETj6jQglQEIq3EZjmO07pq4mI7Q_89qdqB6e50706fXpLcY5hgDOJpWX5NCBAyoYQIweAiGWGR4RSynF8OPTCasiL_uU5uQtgC4CwTfJSULzZEb6s-Wtep3e6Avl3Vh4jmXu03aGGU72y3RjPvWlS2zsUNKu16QANadbXx6MO1povDoI2PynbxcJtcNcPe3J3rOFnNXpfTt3TxOX-fPi9STQSJqeZaU6poVRNNh-RUiKxRShdMgxGCVkVV1ISD0QoXhNckN4LlQCtgHDdQ0XHyePq79-63NyHKrev9MZokORcZEMr4QMGJ0t6F4E0j9962yh8kBnlUJwd18qhOntUNJw-nE2uM-YcDZsAE_QPnrmqv</recordid><startdate>2022</startdate><enddate>2022</enddate><creator>Wang, Xiaolu</creator><creator>Pun, Yuen-Man</creator><creator>So, Anthony Man-Cho</creator><general>IEEE</general><general>The Institute of Electrical and Electronics Engineers, Inc. (IEEE)</general><scope>97E</scope><scope>RIA</scope><scope>RIE</scope><scope>AAYXX</scope><scope>CITATION</scope><scope>7SC</scope><scope>7SP</scope><scope>8FD</scope><scope>JQ2</scope><scope>L7M</scope><scope>L~C</scope><scope>L~D</scope><orcidid>https://orcid.org/0000-0002-6196-2022</orcidid><orcidid>https://orcid.org/0000-0002-5267-3464</orcidid><orcidid>https://orcid.org/0000-0003-2588-7851</orcidid></search><sort><creationdate>2022</creationdate><title>Distributionally Robust Graph Learning From Smooth Signals Under Moment Uncertainty</title><author>Wang, Xiaolu ; Pun, Yuen-Man ; So, Anthony Man-Cho</author></sort><facets><frbrtype>5</frbrtype><frbrgroupid>cdi_FETCH-LOGICAL-c292t-c6cc33a3bd2c30223994faac85c0e993b8b8d260eca1826d27e95703b0561f0b3</frbrgroupid><rsrctype>articles</rsrctype><prefilter>articles</prefilter><language>eng</language><creationdate>2022</creationdate><topic>Analytical models</topic><topic>Convexity</topic><topic>Data models</topic><topic>distributionally robust optimization</topic><topic>Graph learning</topic><topic>graph signal processing</topic><topic>Graphical representations</topic><topic>Laplace equations</topic><topic>Learning</topic><topic>Minimization</topic><topic>moment uncertainty</topic><topic>network topology inference</topic><topic>Optimization</topic><topic>Regularization</topic><topic>Robustness (mathematics)</topic><topic>Signal distribution</topic><topic>Topology</topic><topic>Uncertainty</topic><toplevel>peer_reviewed</toplevel><toplevel>online_resources</toplevel><creatorcontrib>Wang, Xiaolu</creatorcontrib><creatorcontrib>Pun, Yuen-Man</creatorcontrib><creatorcontrib>So, Anthony Man-Cho</creatorcontrib><collection>IEEE All-Society Periodicals Package (ASPP) 2005-present</collection><collection>IEEE All-Society Periodicals Package (ASPP) 1998–Present</collection><collection>IEEE Electronic Library (IEL)</collection><collection>CrossRef</collection><collection>Computer and Information Systems Abstracts</collection><collection>Electronics & Communications Abstracts</collection><collection>Technology Research Database</collection><collection>ProQuest Computer Science Collection</collection><collection>Advanced Technologies Database with Aerospace</collection><collection>Computer and Information Systems Abstracts Academic</collection><collection>Computer and Information Systems Abstracts Professional</collection><jtitle>IEEE transactions on signal processing</jtitle></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext_linktorsrc</fulltext></delivery><addata><au>Wang, Xiaolu</au><au>Pun, Yuen-Man</au><au>So, Anthony Man-Cho</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Distributionally Robust Graph Learning From Smooth Signals Under Moment Uncertainty</atitle><jtitle>IEEE transactions on signal processing</jtitle><stitle>TSP</stitle><date>2022</date><risdate>2022</risdate><volume>70</volume><spage>6216</spage><epage>6231</epage><pages>6216-6231</pages><issn>1053-587X</issn><eissn>1941-0476</eissn><coden>ITPRED</coden><abstract>We consider the problem of learning a graph from a finite set of noisy graph signal observations, the goal of which is to find a smooth representation of the graph signal. Such a problem is motivated by the desire to infer relational structure in large datasets and has been extensively studied in recent years. Most existing approaches focus on learning a graph on which the observed signals are smooth. However, the learned graph is prone to overfitting, as it does not take the unobserved signals into account. To address this issue, we propose a novel graph learning model based on the distributionally robust optimization methodology, which aims to identify a graph that not only provides a smooth representation of but is also robust against uncertainties in the observed signals. On the statistics side, we establish out-of-sample performance guarantees for our proposed model. On the optimization side, we show that under a mild assumption on the graph signal distribution, our proposed model admits a smooth non-convex optimization formulation. We then develop a projected gradient method to tackle this formulation and establish its convergence guarantees. 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subjects | Analytical models Convexity Data models distributionally robust optimization Graph learning graph signal processing Graphical representations Laplace equations Learning Minimization moment uncertainty network topology inference Optimization Regularization Robustness (mathematics) Signal distribution Topology Uncertainty |
title | Distributionally Robust Graph Learning From Smooth Signals Under Moment Uncertainty |
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