ai handle uncertainty
How AI Handles Uncertainty: An Interview With Brian Ziebart - Future of Life Institute
Ziebart's research remains in training settings thus far. He feeds systems messy, varied data and trains them to provide bounding boxes that have at least 70% overlap with people's bounding boxes. And his process has already produced impressive results. On an ImageNet object detection task investigated in collaboration with Sima Behpour (University of Illinois at Chicago) and Kris Kitani (Carnegie Mellon University), for example, Ziebart's adversarial approach "improves performance by over 16% compared to the best performing data augmentation method." Trained to operate amidst uncertain environments, these systems more effectively manage new data points that training didn't explicitly prepare them for.