Time and Date: Tuesdays 3:30 - 4:30
Unless otherwise noted, all talks will take place in Math Sciences Building 110 at the University of Missouri.
Organized by Tim Duff and Dan Edidin. Contact Tim if you want to be on the mailing list.
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Title: Interpretable, Explainable, and Adversarial AI: Data Science Buzzwords and You (Mathematicians)
Abstract: Many state-of-the-art methods in machine learning are black boxes which do not allow humans to understand how decisions are made. In a number of applications, like medicine and atmospheric science, researchers do not trust such black boxes. Explainable AI can be thought of as attempts to open the black box of neural networks, while interpretable AI focuses on creating clear boxes. Adversarial attacks are small perturbations of data that cause a neural network to misclassify the data or act in other undesirable ways. Such attacks are potentially very dangerous when applied to technology like self-driving cars. The goal of this talk is to introduce mathematicians to problems they can attack using their favorite mathematical tools. The mathematical structure of transformers, the powerhouse behind large language models like ChatGPT, will also be explained.
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