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University of Cambridge > Talks.cam > CCAIM Seminar Series > Bayesian Deep Learning: From Reliable Neural Networks to Interpretable Foundation Models
Bayesian Deep Learning: From Reliable Neural Networks to Interpretable Foundation ModelsAdd to your list(s) Download to your calendar using vCal
If you have a question about this talk, please contact Andreas Bedorf. While perception tasks such as visual object recognition and text understanding play an important role in human intelligence, the subsequent tasks that involve inference, reasoning, and planning require an even higher level of intelligence. The past decade has seen major advances in many perception tasks using deep learning models. In terms of higher-level inference, however, probabilistic graphical models, with their ability to expressively describe properties of variables and various probabilistic relations among variables, are still more powerful and flexible. To achieve integrated intelligence that involves both perception and inference, we have been exploring along a research direction, which we call Bayesian deep learning, to tightly integrate deep learning and Bayesian models within a principled probabilistic framework. In this talk, I will present the proposed unified framework and some of our recent work on Bayesian deep learning with various applications including interpretable large language models, network analysis, and healthcare. Bio: Hao Wang is currently an Assistant Professor in the Department of Computer Science at Rutgers University. Previously he was a Postdoctoral Associate at the Computer Science & Artificial Intelligence Lab (CSAIL) of MIT , working with Dina Katabi and Tommi Jaakkola. He received his PhD degree from the Hong Kong University of Science and Technology, as the sole recipient of the School of Engineering PhD Research Excellence Award in 2017. He has been a visiting researcher in the Machine Learning Department of Carnegie Mellon University. His research focuses on statistical machine learning, deep learning, and data mining, with broad applications on healthcare, network analysis, time series analysis, etc. His work on Bayesian deep learning for recommender systems has inspired hundreds of follow-up works at ICML , NIPS, ICLR , KDD, etc., becoming the most cited paper at KDD 2015 . His research was recognized and supported by the Microsoft Fellowship in Asia, the Baidu Research Fellowship, the Amazon Faculty Research Award, the Microsoft AI & Society Fellowship, the NSF CAREER Award, and an NIH R01 Award. This talk is part of the CCAIM Seminar Series series. This talk is included in these lists:Note that ex-directory lists are not shown. |
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