אירועים
אירועים והרצאות בפקולטה למדעי המחשב ע"ש הנרי ומרילין טאוב
Yaniv Romano - CS-Lecture
יום חמישי, 16.01.2020, 10:30
Modern machine learning algorithms have achieved remarkable performance in a myriad of
applications, and are increasingly used to make impactful decisions in the hiring process,
criminal sentencing, healthcare diagnostics and even to make new scientific discoveries.
The use of data-driven algorithms in high-stakes applications is exciting yet alarming:
these methods are extremely complex, often brittle, notoriously hard to analyze and
interpret. Naturally, concerns have raised about the reliability, fairness, and
reproducibility of the output of such algorithms. This talk introduces statistical tools
that can be wrapped around any ''black-box'' algorithm to provide valid inferential results
while taking advantage of their impressive performance. We present novel developments in
conformal prediction and quantile regression, which rigorously guarantee the reliability
of complex predictive models, and show how these methodologies can be used to treat
individuals equitably. Next, we focus on reproducibility and introduce an operational
selective inference tool that builds upon the knockoff framework and leverages recent
progress in deep generative models. This methodology allows for reliable identification of
a subset of important features that is likely to explain a phenomenon under-study in a
challenging setting where the data distribution is unknown, e.g., mutations that are truly
linked to changes in drug resistance.
Short Bio:
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Yaniv Romano is a postdoctoral scholar in the Department of Statistics at Stanford
University, advised by Prof. Emmanuel Candes. He earned his Ph.D. and M.Sc. degrees in
2017 from the Department of Electrical Engineering at the Technion-Israel Institute of
Technology, under the supervision of Prof. Michael Elad. Before that, in 2012, Yaniv
received his B.Sc. from the same department. His research spans the theory and practice of
selective inference, sparse approximation, machine learning, data science, and signal and
image processing. His goal is to advance the theory and practice of modern machine
learning, as well as to develop statistical tools that can be wrapped around any
data-driven algorithm to provide valid inferential results. Yaniv is also interested in
image recovery problems: the super-resolution technology he invented together with Dr.
Peyman Milanfar is being used in Google's flagship products, increasing the quality of
billions of images and bringing significant bandwidth savings. In 2017, he constructed
with Prof. Michael Elad a MOOC on the theory and practice of sparse representations, under
the edX platform. Yaniv is a recipient of the 2015 Zeff Fellowship, the 2017 Andrew and
Erna Finci Viterbi Fellowship, the 2017 Irwin and Joan Jacobs Fellowship, the 2018-2020
Zuckerman Postdoctoral Fellowship, the 2018-2020 ISEF Postdoctoral Fellowship, the
2018-2020 Viterbi Fellowship for nurturing future faculty members, Technion, and the
2019-2020 Koret Postdoctoral Scholarship, Stanford University. Yaniv was awarded the 2020
SIAG/IS Early Career Prize.