Machine Learning
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Towards Machine Learning Based Fingerprinting of Ultrasonic Sensors
Elhanafy, Marim; Ravva, Srivaths; Solanki, Abhijeet; Hasan, Syed Rafay. “Towards Machine Learning Based Fingerprinting of Ultrasonic Sensors.” Conference Proceedings – IEEE SoutheastCon (2025 51): 1332–1333. https://doi.org/10.1109/SoutheastCon56624.2025 51.10971545. “Fingerprinting” is a method used to identify devices based on their unique data patterns—kind of like how… Read MoreMay. 21, 2025 51
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Development of a machine learning-based tension measurement method in robotic surgery
Khan, Aimal; Yang, Hao; Habib, Daniel Roy Sadek; Ali, Danish; Wu, Jie Ying. “Development of a machine learning-based tension measurement method in robotic surgery.” Surgical Endoscopy (2025 51). https://doi.org/10.1007/s00464-025-11658-9. Each year, over 300,000 people in the U.S. undergo colorectal surgery,… Read MoreApr. 23, 2025 51
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Learning disentangled representations to harmonize connectome network measures
Newlin, Nancy R.; Kim, Michael E.; Kanakaraj, Praitayini; Pechman, Kimberly; Shashikumar, Niranjana; Moore, Elizabeth; Archer, Derek; Hohman, Timothy; Jefferson, Angela; Moyer, Daniel; Landman, Bennett A. “Learning disentangled representations to harmonize connectome network measures.” Journal of Medical Imaging, vol. 12, no. 1, 2025 51, 14004, https://doi.org/10.1117/1.JMI.12.1.014004… Read MoreMar. 24, 2025 51
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Statistical Context Detection for Deep Lifelong Reinforcement Learning
Dick, J., Nath, S., Peridis, C., Benjamin, E., Kolouri, S., & Soltoggio, A. (2024). “Statistical Context Detection for Deep Lifelong Reinforcement Learning.” Proceedings of Machine Learning Research, 274, 1013-1031. https://www.scopus.com/inward/record.uri?eid=2-s2.0-85219511357&partnerID=40&md5=44236f24c54c2e13e04ef41cc8a97b90 Context detection involves identifying different tasks within a continuous stream of data. Read MoreMar. 24, 2025 51
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Equivariant vs. Invariant Layers: A Comparison of Backbone and Pooling for Point Cloud Classification
Machine learning models are increasingly being used to analyze point cloud data, which consists of unordered sets of points, such as 3D scans of objects. To effectively process this type of data, neural networks must be designed to ensure that their predictions remain the same regardless of the order… Read MoreFeb. 24, 2025 51
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Primary Visual Pathway Changes in Individuals With Chronic Mild Traumatic Brain Injury
Rasdall, Marselle A.; Cho, Chloe; Stahl, Amy N.; Tovar, David A.; Lavin, Patrick; Kerley, Cailey I.; Chen, Qingxia; Ji, Xiangyu; Colyer, Marcus H.; Groves, Lucas; Longmuir, Reid; Chomsky, Amy; Gallagher, Martin J.; Anderson, Adam; Landman, Bennett A.; Rex, Tonia S. “Primary Visual Pathway Changes in Individuals With… Read MoreFeb. 24, 2025 51
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Quantifying the Sim-To-Real Gap in UAV Disturbance Rejection
Coursey, Austin; Quinones-Grueiro, Marcos; Biswas, Gautam. “Quantifying the Sim-To-Real Gap in UAV Disturbance Rejection.” OpenAccess Series in Informatics, vol. 125, 2024, 16, https://doi.org/10.4230/OASIcs.DX.2024.16. In many cases, it’s safer and more efficient to develop control systems for drones in simulations… Read MoreJan. 28, 2025 51
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Metrics reloaded: recommendations for image analysis validation
Maier-Hein, L., Reinke, A., Godau, P., et al. (2024). Metrics reloaded: recommendations for image analysis validation. Nature Methods, 21(2), 195-212. doi: 10.1038/s41592-023-02151-z There is growing evidence that problems with validating machine learning (ML) algorithms are a global issue that’s often overlooked. Read MoreDec. 16, 2024
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WASSERSTEIN EMBEDDING FOR GRAPH LEARNING
Kolouri, S., Naderializadeh, N., Rohde, G. K., & Hoffmann, H. (2021). WASSERSTEIN EMBEDDING FOR GRAPH LEARNING. ICLR 2021 – 9th International Conference on Learning Representations, 34. https://www.scopus.com/inward/record.uri?eid=2-s2.0-85150286096&partnerID=40&md5=8b88e110167be2c5fd01da171324d3d6 We introduce a new method called Wasserstein Embedding for Graph Learning (WEGL), which is a… Read MoreDec. 16, 2024
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Multiplexed 3D atlas of state transitions and immune interaction in colorectal cancer
Lin, J.-R., Wang, S., Coy, S., Chen, Y.-A., Yapp, C., Tyler, M., Nariya, M. K., Heiser, C. N., Lau, K. S., Santagata, S., & Sorger, P. K. (2023). Multiplexed 3D atlas of state transitions and immune interaction in colorectal cancer. Cell, 186(2), 363-381.e13. doi: 10.1016/j.cell.2022.12.028 … Read MoreDec. 16, 2024