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Ryan J. Urbanowicz

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Coevolving Artistic Images Using OMNIREP

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Jan 20, 2024
Moshe Sipper, Jason H. Moore, Ryan J. Urbanowicz

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New Pathways in Coevolutionary Computation

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Jan 19, 2024
Moshe Sipper, Jason H. Moore, Ryan J. Urbanowicz

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STREAMLINE: An Automated Machine Learning Pipeline for Biomedicine Applied to Examine the Utility of Photography-Based Phenotypes for OSA Prediction Across International Sleep Centers

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Dec 09, 2023
Ryan J. Urbanowicz, Harsh Bandhey, Brendan T. Keenan, Greg Maislin, Sy Hwang, Danielle L. Mowery, Shannon M. Lynch, Diego R. Mazzotti, Fang Han, Qing Yun Li, Thomas Penzel, Sergio Tufik, Lia Bittencourt, Thorarinn Gislason, Philip de Chazal, Bhajan Singh, Nigel McArdle, Ning-Hung Chen, Allan Pack, Richard J. Schwab, Peter A. Cistulli, Ulysses J. Magalang

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Automatically Balancing Model Accuracy and Complexity using Solution and Fitness Evolution (SAFE)

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Jun 30, 2022
Moshe Sipper, Jason H. Moore, Ryan J. Urbanowicz

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Solution and Fitness Evolution (SAFE): A Study of Multiobjective Problems

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Jun 25, 2022
Moshe Sipper, Jason H. Moore, Ryan J. Urbanowicz

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Solution and Fitness Evolution (SAFE): Coevolving Solutions and Their Objective Functions

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Jun 25, 2022
Moshe Sipper, Jason H. Moore, Ryan J. Urbanowicz

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STREAMLINE: A Simple, Transparent, End-To-End Automated Machine Learning Pipeline Facilitating Data Analysis and Algorithm Comparison

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Jun 23, 2022
Ryan J. Urbanowicz, Robert Zhang, Yuhan Cui, Pranshu Suri

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LCS-DIVE: An Automated Rule-based Machine Learning Visualization Pipeline for Characterizing Complex Associations in Classification

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Apr 26, 2021
Robert Zhang, Rachael Stolzenberg-Solomon, Shannon M. Lynch, Ryan J. Urbanowicz

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A Rigorous Machine Learning Analysis Pipeline for Biomedical Binary Classification: Application in Pancreatic Cancer Nested Case-control Studies with Implications for Bias Assessments

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Sep 08, 2020
Ryan J. Urbanowicz, Pranshu Suri, Yuhan Cui, Jason H. Moore, Karen Ruth, Rachael Stolzenberg-Solomon, Shannon M. Lynch

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