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Eva L. Dyer

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A Unified, Scalable Framework for Neural Population Decoding

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Oct 24, 2023
Mehdi Azabou, Vinam Arora, Venkataramana Ganesh, Ximeng Mao, Santosh Nachimuthu, Michael J. Mendelson, Blake Richards, Matthew G. Perich, Guillaume Lajoie, Eva L. Dyer

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LatentDR: Improving Model Generalization Through Sample-Aware Latent Degradation and Restoration

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Aug 28, 2023
Ran Liu, Sahil Khose, Jingyun Xiao, Lakshmi Sathidevi, Keerthan Ramnath, Zsolt Kira, Eva L. Dyer

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Half-Hop: A graph upsampling approach for slowing down message passing

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Aug 17, 2023
Mehdi Azabou, Venkataramana Ganesh, Shantanu Thakoor, Chi-Heng Lin, Lakshmi Sathidevi, Ran Liu, Michal Valko, Petar Veličković, Eva L. Dyer

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Relax, it doesn't matter how you get there: A new self-supervised approach for multi-timescale behavior analysis

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Mar 15, 2023
Mehdi Azabou, Michael Mendelson, Nauman Ahad, Maks Sorokin, Shantanu Thakoor, Carolina Urzay, Eva L. Dyer

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Learning signatures of decision making from many individuals playing the same game

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Feb 21, 2023
Michael J Mendelson, Mehdi Azabou, Suma Jacob, Nicola Grissom, David Darrow, Becket Ebitz, Alexander Herman, Eva L. Dyer

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MTNeuro: A Benchmark for Evaluating Representations of Brain Structure Across Multiple Levels of Abstraction

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Jan 01, 2023
Jorge Quesada, Lakshmi Sathidevi, Ran Liu, Nauman Ahad, Joy M. Jackson, Mehdi Azabou, Jingyun Xiao, Christopher Liding, Matthew Jin, Carolina Urzay, William Gray-Roncal, Erik C. Johnson, Eva L. Dyer

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The good, the bad and the ugly sides of data augmentation: An implicit spectral regularization perspective

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Oct 10, 2022
Chi-Heng Lin, Chiraag Kaushik, Eva L. Dyer, Vidya Muthukumar

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Learning Behavior Representations Through Multi-Timescale Bootstrapping

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Jun 14, 2022
Mehdi Azabou, Michael Mendelson, Maks Sorokin, Shantanu Thakoor, Nauman Ahad, Carolina Urzay, Eva L. Dyer

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Seeing the forest and the tree: Building representations of both individual and collective dynamics with transformers

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Jun 10, 2022
Ran Liu, Mehdi Azabou, Max Dabagia, Jingyun Xiao, Eva L. Dyer

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Learning Sinkhorn divergences for supervised change point detection

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Feb 10, 2022
Nauman Ahad, Eva L. Dyer, Keith B. Hengen, Yao Xie, Mark A. Davenport

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