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Tecas ECE Alumna Jette Henderson Receives 2019 AMIA Doctoral Dissertation Award

June 26, 2019
Texas ECE alumna Jette Henderson was announced as the recipient of the 2019 American Medical Informatics Association (AMIA) Doctoral Dissertation Award: Honorable Mention. AMIA "is committed to the science and practice of informatics as it relates to clinical care, research, education, and policy."  Dr. Henderson's thesis was on “Learning and Validating Clinically Meaningful Phenotypes from Electronic Health Data.” She completed her PhD at Texas ECE in 2018 under the supervisions of Prof. Joydeep Ghosh.
Amia information professionals leading the way.

Texas ECE Alumna Jette Henderson Receives 2019 AMIA Doctoral Dissertation Award

June 26, 2019
Texas ECE alumna Jette Henderson was announced as the recipient of the 2019 American Medical Informatics Association (AMIA) Doctoral Dissertation Award: Honorable Mention. AMIA "is committed to the science and practice of informatics as it relates to clinical care, research, education, and policy."  Dr. Henderson's thesis was on “Learning and Validating Clinically Meaningful Phenotypes from Electronic Health Data.” She completed her PhD at Texas ECE in 2018 under the supervisions of Prof. Joydeep Ghosh.
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Prof. Robert Heath Gives Keynote at IEEE ML4COM

June 19, 2018
Prof. Robert Heath delivered a keynote speech at IEEE Communication Society’s 2018 International Conference on Communications (IEEE ICC).
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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.