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Texas ECE PhD Alum Jette Henderson Wins Best Student Paper at KDD MLMH workshop on Machine Learning for Healthcare

Nov. 1, 2018
Texas ECE alumna Jette Henderson, who completed her PhD in August, received the Best Student Paper award for the paper "PIVETed-Granite: Computational Phenotypes through Constrained Tensor Factorization" at the KDD MLMH Workshop on Machine Learning for Healthcare in London in August. Jette worked under the supervision of Texas ECE professor Joydeep Ghosh. The paper uses a special kind of tensor factorization that is guided by supporting evidence from PubMed, a huge repository of medical literature, to extract meaningful insights from electronic health records.
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Prof. Andrea Thomaz Presents Robotic Healthcare Assistance Technologies at stARTup Studio

Feb. 25, 2016
Prof. Andrea Thomaz, associate professor in the Department of Electrical and Computer Engineering, appeared at stARTup Studio to present Diligent Droids, a company that seeks to provide aid to healthcare providers through robotic technologies. Thomaz said she hopes to apply her research in the field of artificial intelligence to help healthcare providers with their service. Prof. Thomaz joined Texas ECE in January 2016.  Read more about Prof. Thomaz and Diligent Droids at Silicon Hills News
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Prof. Joydeep Ghosh Gives Keynotes at WDDL2013 and DMH 2013

Sept. 3, 2013
Prof. Joydeep Ghosh of UT ECE was the keynote speaker at the inaugural Workshop on Divergences and Divergence Learning (WDDl), held in Atlanta, June 2013. In his talk, entitled "Learning Bregman Divergences for Prediction with Generalized Linear Models," which reflects joint work with ECE and WNCG student Sreangsu Acharrya,  an efficient approach to learning a broad class of predictive models was introduced. What is most remarkable about this approach is that model parameters can be estimated even when the loss function is unknown.