אירועים
אירועים והרצאות בפקולטה למדעי המחשב ע"ש הנרי ומרילין טאוב
יום שלישי, 03.01.2017, 10:30
The proliferation of data collection in the health, commercial, and
economic spheres, brings with it opportunities for extracting new
knowledge with concrete policy implications. Examples include
individualizing medical practices based on electronic healthcare
records, and understanding the implications of job training programs on
employment and income.
The scientific challenge lies in the fact that standard prediction
models such as supervised machine learning are often not enough for
decision making from this so-called ''observational data'':
Supervised learning does not take into account causality, nor does
it account for the feedback loops that arise when predictions
are turned into actions. On the other hand, existing causal-inference
methods are not adapted to dealing with the rich and complex data now
available, and often focus on populations, as opposed to
individual-level effects.
The problem is most closely related to reinforcement learning and bandit
problems in machine learning, but with the important property of having
no control over experiments and no direct access to the actor's
model.
In my talk I will discuss how we apply recent ideas from machine
learning to individual-level causal-inference and action. I will
introduce a novel generalization bound for estimating individual-level
treatment effect, and further show how we use representation learning
and deep temporal generative models to create new algorithms geared
towards this problem. Finally, I will show experimental results using
data from electronic medical records and data from a job training
program.
Short Bio:
=========
Uri Shalit is a postdoctoral researcher in the Courant Institute of
Mathematical Sciences, New York University, working at David Sontag's
Clinical Machine Learning Lab. His research is focused on creating new
methods for finding causal relationships in large-scale high-dimensional
observational studies. One of the major motivations for his research is
applications in healthcare and clinical medicine. Uri completed his PhD
studies at the School of Computer Science & Engineering at The Hebrew
University of Jerusalem, under the guidance of Prof. Gal Chechik and
Prof. Daphna Weinshall. From 2011 to 2014 Uri was a recipient of
Google's European Fellowship in Machine Learning. Previously he has
received the Daniel Amit fellowship for significant contribution in
theoretical or computational neuroscience, and the Alice and Jack Ormut
Foundation PhD Fellowship.