Web: http://arxiv.org/abs/2209.07592

Sept. 19, 2022, 1:14 a.m. | Mazda Moayeri, Kiarash Banihashem, Soheil Feizi

cs.CV updates on arXiv.org arxiv.org

Several existing works study either adversarial or natural distributional
robustness of deep neural networks separately. In practice, however, models
need to enjoy both types of robustness to ensure reliability. In this work, we
bridge this gap and show that in fact, explicit tradeoffs exist between
adversarial and natural distributional robustness. We first consider a simple
linear regression setting on Gaussian data with disjoint sets of core and
spurious features. In this setting, through theoretical and empirical analysis,
we show that …

arxiv natural robustness

More from arxiv.org / cs.CV updates on arXiv.org

Postdoctoral Fellow: ML for autonomous materials discovery

@ Lawrence Berkeley National Lab | Berkeley, CA

Research Scientists

@ ODU Research Foundation | Norfolk, Virginia

Embedded Systems Engineer (Robotics)

@ Neo Cybernetica | Bedford, New Hampshire

2023 Luis J. Alvarez and Admiral Grace M. Hopper Postdoc Fellowship in Computing Sciences

@ Lawrence Berkeley National Lab | San Francisco, CA

Senior Manager Data Scientist

@ NAV | Remote, US

Senior AI Research Scientist

@ Earth Species Project | Remote anywhere

Research Fellow- Center for Security and Emerging Technology (Multiple Opportunities)

@ University of California Davis | Washington, DC

Staff Fellow - Data Scientist

@ U.S. FDA/Center for Devices and Radiological Health | Silver Spring, Maryland

Staff Fellow - Senior Data Engineer

@ U.S. FDA/Center for Devices and Radiological Health | Silver Spring, Maryland

Research Engineer - VFX, Neural Compositing

@ Flawless | Los Angeles, California, United States

[Job-TB] Senior Data Engineer

@ CI&T | Brazil

Data Analytics Engineer

@ The Fork | Paris, France