Workshop: Workshop on Dataset Curation and Security
Nathalie Baracaldo Angel, Yonatan Bisk, Avrim Blum, Michael Curry, John Dickerson, Micah Goldblum, Tom Goldstein, Bo Li, Avi Schwarzschild
Fri, Dec 11th, 2020 @ 14:00 – 19:00 GMT
more: https://securedata.lol/
Abstract: Classical machine learning research has been focused largely on models, optimizers, and computational challenges. As technical progress and hardware advancements ease these challenges, practitioners are now finding that the limitations and faults of their models are the result of their datasets. This is particularly true of deep networks, which often rely on huge datasets that are too large and unwieldy for domain experts to curate them by hand. This workshop addresses issues in the following areas: data harvesting, dealing with the challenges and opportunities involved in creating and labeling massive datasets; data security, dealing with protecting datasets against risks of poisoning and backdoor attacks; policy, security, and privacy, dealing with the social, ethical, and regulatory issues involved in collecting large datasets, especially with regards to privacy; and data bias, related to the potential of biased datasets to result in biased models that harm members of certain groups. Dates and details can be found at [securedata.lol](https://securedata.lol/)
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Schedule
14:00 – 14:30 GMT
Dawn Song (topic TBD)
Dawn Song
14:30 – 15:00 GMT
What Do Our Models Learn?
Aleksander Madry
15:00 – 15:15 GMT
Discussion
15:15 – 15:30 GMT
Break
15:30 – 16:00 GMT
Darrell West (TBD)
Darrell West
16:00 – 16:30 GMT
Adversarial, Socially Aware, and Commonsensical Data
Yejin Choi
16:30 – 16:45 GMT
Discussion panel
16:45 – 18:00 GMT
Lunch Break
18:00 – 18:30 GMT
Dataset Curation via Active Learning
Robert Nowak
18:30 – 19:00 GMT
Don't Steal Data
Liz O'Sullivan