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|Week of Nov 29 || Ethan Cyrenne, Dieu Hoa Nguyen, Mary Jane Sin, Carolyn Wang || || || || || | |Week of Nov 29 || Ethan Cyrenne, Dieu Hoa Nguyen, Mary Jane Sin, Carolyn Wang || || || || || | ||
|Week of Nov 22 || Ann Gie Wong, Curtis Li, Hannah Kerr || || The Detection of Black Ice Accidents for Preventative | |||
Automated Vehicles Using Convolutional Neural Networks || [https://www.mdpi.com/2079-9292/9/12/2178/htm Paper] || || |
Revision as of 21:02, 8 November 2021
Project Proposal
Paper presentation
Date | Name | Paper number | Title | Link to the paper | Link to the summary | Link to the video | ||||
Sep 15 (example) | Ri Wang | Sequence to sequence learning with neural networks. | Paper | Summary | [1] | |||||
Week of Nov 16 | Ali Ghodsi | |||||||||
Week of Nov 16 | Jared Feng, Xipeng Huang, Mingwei Xu, Tingzhou Yu | Don't Just Blame Over-parametrization for Over-confidence: Theoretical Analysis of Calibration in Binary Classification | Paper | Summary | ||||||
Week of Nov 16 | Kanika Chopra, Yush Rajcoomar | Automatic Bank Fraud Detection Using Support Vector Machines | Paper | |||||||
Week of Nov 22 | Zeng Mingde, Lin Xiaoyu, Fan Joshua, Rao Chen Min | |||||||||
Week of Nov 22 | Justin D'Astous, Waqas Hamed, Stefan Vladusic, Ethan O'Farrell | A Probabilistic Approach to Neural Network Pruning | [2] | |||||||
Week of Nov 22 | Cassandra Wong, Anastasiia Livochka, Maryam Yalsavar, David Evans | Patch-Based Convolutional Neural Network for Whole Slide Tissue Image Classification | Paper | |||||||
Week of Nov 22 | Jessie Man Wai Chin, Yi Lin Ooi, Yaqi Shi, Shwen Lyng Ngew | |||||||||
Week of Nov 22 | Eric Anderson, Chengzhi Wang, Kai Zhong, YiJing Zhou | |||||||||
Week of Nov 29 | Ethan Cyrenne, Dieu Hoa Nguyen, Mary Jane Sin, Carolyn Wang | Week of Nov 22 | Ann Gie Wong, Curtis Li, Hannah Kerr | The Detection of Black Ice Accidents for Preventative
Automated Vehicles Using Convolutional Neural Networks || Paper || || |