CHALLENGES IN OPTIMIZATION FOR DATA SCIENCE
July 1-2, 2015
Université Pierre et Marie Curie Paris 6
Amphitheater 15
4, Place Jussieu
Paris 5ème
Objective:
In many data science problems, one is faced with large data
sets, scarce or uncertain prior information, and restricted
memory capabilities and computing power.
Optimization "the art of doing things better with limited
resources" naturally plays a central role in the various
facets of data science.
The aim of this conference is to bring together
researchers and scientists with different background and expertise
to discuss challenging issues in the modeling and the numerical
solution of optimization problems arising in data science.
The conference is organized around 15 interactive invited
plenary talks.
Program:
Titles disclosed at the beginning of each talk
-
July 1, 2015
-
08:50 09:00 : Opening address
-
09:00 09:45 :
V. Anantharam,
Data-derived pointwise consistency
slides
-
09:45 10:30 :
H.
Attouch,
Fast inertial dynamics for convex
optimization
Convergence of FISTA algorithms
slides
-
10:30 11:00 : Break
-
11:00 11:45 :
F. Bach,
Towards tighter convergence rates
slides
-
11:45 12:30 :
S.
Bubeck,
Revisiting Nesterov's accelerated gradient
descent method
slides
-
12:30 14:00 : Break
-
14:00 14:45 :
V. Chandrasekaran,
Relative entropy optimization and
applications
slides
-
14:45 15:30 :
Y. LeCun,
Large-scale optimization for deep
learning
slides
-
15:30 16:00 : Break
-
16:00 16:45 :
E. De Vito,
Kernel methods for support
estimation
slides
-
16:45 17:30 :
I. Giulini,
A spectral clustering algorithm based on Gram
operators
slides
- July 2, 2015
-
09:00 09:45 :
E. Hazan,
Projection-free optimization and
learning
slides
-
09:45 10:30 :
G. Iyengar,
First-order algorithms for convex
optimization
slides
-
10:30 11:00 : Break
-
11:00 11:45 :
L. Orecchia,
Combinatorial meets convex
slides
-
11:45 12:30 :
M. L. Overton,
Nonsmooth, nonconvex optimization
algorithms and examples
slides
-
12:30 14:00 : Break
-
14:00 14:45 :
N.
Pustelnik,
Some challenges in optimization and image
reconstruction
slides
-
14:45 15:30 :
J. W. Silverstein,
Estimating population eigenvalues from
large-dimensional sample covariance matrices
slides
-
15:30 16:00 : Break
-
16:00 16:45 :
S. J. Wright,
Computations with coordinate descent
methods
slides
Organizers: