Adversarial examples are really, really weird: pictures of penguins that get classified with high certainty by machine learning algorithms as drumsets, or random noise labeled as pandas, or any one of an infinite number of mistakes in labeling data that humans would never make but computers make with joyous abandon. What gives? A compelling new argument makes the case that it’s not the algorithms so much as the features in the datasets that holds the clue. This week’s episode goes through several papers pushing our collective understanding of adversarial examples, and giving us clues to what makes these counterintuitive cases possible.
Relevant links:
https://arxiv.org/pdf/1905.02175.pdf
https://arxiv.org/pdf/1805.12152.pdf
https://distill.pub/2019/advex-bugs-discussion/
https://arxiv.org/pdf/1911.02508.pdf
Fler avsnitt av Linear Digressions
Visa alla avsnitt av Linear DigressionsLinear Digressions med Katie Malone finns tillgänglig på flera plattformar. Informationen på denna sida kommer från offentliga podd-flöden.
