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September 19 - 23, 2011
This
workshop is part of the thematic semester "High Dimensional
Approximation, Learning Theory and Stochastic Partial Differential
Equations" of fall 2011. Modern statistical
theory concerns the estimation of objects in complex parameter spaces,
for example a space of regression functions with a huge number of
variables, or a collection of convex sets in image analysis, etc. A key
point is the way one describes smoothness. For example, smoothness may be
sparsity, e.g. in the number of coefficients in a wavelet expansion, or
the dimension of a manifold. An important topic in this workshop is the
adaptation to unknown smoothness, using penalty based methods which are
computationally feasible for high-dimensional problems. The workshop has as
sub-theme "Graphical modeling and causal inference", with important
connections to the theory of sparse (random) graphs, discrete
optimization including randomized algorithms, and sparse approximation. Talks (titles, abstracts, slides)
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