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Jung H. Lee

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Having Second Thoughts? Let's hear it

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Nov 26, 2023
Jung H. Lee, Sujith Vijayan

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One Representation to Rule Them All: Identifying Out-of-Support Examples in Few-shot Learning with Generic Representations

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Jun 02, 2021
Henry Kvinge, Scott Howland, Nico Courts, Lauren A. Phillips, John Buckheit, Zachary New, Elliott Skomski, Jung H. Lee, Sandeep Tiwari, Jessica Hibler, Courtney D. Corley, Nathan O. Hodas

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Fuzzy Simplicial Networks: A Topology-Inspired Model to Improve Task Generalization in Few-shot Learning

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Sep 23, 2020
Henry Kvinge, Zachary New, Nico Courts, Jung H. Lee, Lauren A. Phillips, Courtney D. Corley, Aaron Tuor, Andrew Avila, Nathan O. Hodas

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DynMat, a network that can learn after learning

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Jun 16, 2018
Jung H. Lee

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