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Authority And The Globalisation Of Inclusion And Exclusion: Author Meets Readers, Hand Lindahl, Christine Bell Prof, Friedrich Kratochwil, Hans-W. Micklitz, Carlos Thiebaut, Bert Van Roermund Aug 2020

Authority And The Globalisation Of Inclusion And Exclusion: Author Meets Readers, Hand Lindahl, Christine Bell Prof, Friedrich Kratochwil, Hans-W. Micklitz, Carlos Thiebaut, Bert Van Roermund

Indiana Journal of Global Legal Studies

Authority is written against the background of intense resistance to globalization processes by a range of political movements and grassroots organizations. These processes are complex and have a variety of dimensions. One of these is the emergence of global legal orders, which I define, in a rough and ready manner, as relatively autonomous legal orders that claim or aspire to claim global validity for themselves. They too-most obviously the World Trade Organization (WTO)-are the butt of resistance. Whatever its forms and aspirations, resistance to globalization is fueled by their peculiar dynamic. Indeed, emergent global legal orders spawn massive exclusion when …


Ethical Testing In The Real World: Evaluating Physical Testing Of Adversarial Machine Learning, Kendra Albert, Maggie Delano, Jonathon Penney, Afsaneh Ragot, Ram Shankar Siva Kumar Jan 2020

Ethical Testing In The Real World: Evaluating Physical Testing Of Adversarial Machine Learning, Kendra Albert, Maggie Delano, Jonathon Penney, Afsaneh Ragot, Ram Shankar Siva Kumar

Articles, Book Chapters, & Popular Press

This paper critically assesses the adequacy and representativeness of physical domain testing for various adversarial machine learning (ML) attacks against computer vision systems involving human subjects. Many papers that deploy such attacks characterize themselves as “real world.” Despite this framing, however, we found the physical or real-world testing conducted was minimal, provided few details about testing subjects and was often conducted as an afterthought or demonstration. Adversarial ML research without representative trials or testing is an ethical, scientific, and health/safety issue that can cause real harms. We introduce the problem and our methodology, and then critique the physical domain testing …