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Nate Veldt

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Combinatorial Approximations for Cluster Deletion: Simpler, Faster, and Better

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Apr 24, 2024
Vicente Balmaseda, Ying Xu, Yixin Cao, Nate Veldt

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Faster Approximation Algorithms for Parameterized Graph Clustering and Edge Labeling

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Jun 08, 2023
Vedangi Bengali, Nate Veldt

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On the Optimal Recovery of Graph Signals

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Apr 02, 2023
Simon Foucart, Chunyang Liao, Nate Veldt

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Seven open problems in applied combinatorics

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Mar 20, 2023
Sinan G. Aksoy, Ryan Bennink, Yuzhou Chen, José Frías, Yulia R. Gel, Bill Kay, Uwe Naumann, Carlos Ortiz Marrero, Anthony V. Petyuk, Sandip Roy, Ignacio Segovia-Dominguez, Nate Veldt, Stephen J. Young

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Faster Deterministic Approximation Algorithms for Correlation Clustering and Cluster Deletion

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Nov 20, 2021
Nate Veldt

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Approximate Decomposable Submodular Function Minimization for Cardinality-Based Components

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Oct 28, 2021
Nate Veldt, Austin R. Benson, Jon Kleinberg

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The Generalized Mean Densest Subgraph Problem

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Jun 04, 2021
Nate Veldt, Austin R. Benson, Jon Kleinberg

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Generative hypergraph clustering: from blockmodels to modularity

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Jan 27, 2021
Philip S. Chodrow, Nate Veldt, Austin R. Benson

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Fair Clustering for Diverse and Experienced Groups

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Jun 11, 2020
Ilya Amburg, Nate Veldt, Austin R. Benson

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Parameterized Objectives and Algorithms for Clustering Bipartite Graphs and Hypergraphs

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Feb 21, 2020
Nate Veldt, Anthony Wirth, David F. Gleich

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