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Mark Heimann

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Accurate and Scalable Estimation of Epistemic Uncertainty for Graph Neural Networks

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Jan 07, 2024
Puja Trivedi, Mark Heimann, Rushil Anirudh, Danai Koutra, Jayaraman J. Thiagarajan

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On Performance Discrepancies Across Local Homophily Levels in Graph Neural Networks

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Jun 08, 2023
Donald Loveland, Jiong Zhu, Mark Heimann, Benjamin Fish, Michael T. Shaub, Danai Koutra

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CAPER: Coarsen, Align, Project, Refine - A General Multilevel Framework for Network Alignment

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Aug 23, 2022
Jing Zhu, Danai Koutra, Mark Heimann

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Analyzing Data-Centric Properties for Contrastive Learning on Graphs

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Aug 04, 2022
Puja Trivedi, Ekdeep Singh Lubana, Mark Heimann, Danai Koutra, Jayaraman J. Thiagarajan

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Contrastive Knowledge-Augmented Meta-Learning for Few-Shot Classification

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Jul 25, 2022
Rakshith Subramanyam, Mark Heimann, Jayram Thathachar, Rushil Anirudh, Jayaraman J. Thiagarajan

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On Graph Neural Network Fairness in the Presence of Heterophilous Neighborhoods

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Jul 10, 2022
Donald Loveland, Jiong Zhu, Mark Heimann, Ben Fish, Michael T. Schaub, Danai Koutra

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Emerging Patterns in the Continuum Representation of Protein-Lipid Fingerprints

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Jul 09, 2022
Konstantia Georgouli, Helgi I Ingólfsson, Fikret Aydin, Mark Heimann, Felice C Lightstone, Peer-Timo Bremer, Harsh Bhatia

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Node Proximity Is All You Need: Unified Structural and Positional Node and Graph Embedding

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Feb 26, 2021
Jing Zhu, Xingyu Lu, Mark Heimann, Danai Koutra

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G-CREWE: Graph CompREssion With Embedding for Network Alignment

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Jul 30, 2020
Kyle K. Qin, Flora D. Salim, Yongli Ren, Wei Shao, Mark Heimann, Danai Koutra

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