Abstract:
Predictive Modeling tasks deal with high-dimensional data, and curse of
dimensionality is an obstacle to the use of many methods for their
solutions. In many applications, real-world data occupy only a very
small part of high-dimensional observation space whose intrinsic
dimension is essentially lower than dimension of the space. Popular
model for such data is a Manifold one in accordance with which data lie
on or near an unknown low-dimensional Data manifold (DM) embedded in an
ambient high-dimensional space. Predictive Modeling tasks studied under
this assumption are referred to as the manifold learning ones whose
general goal is discovering a low-dimensional structure of
high-dimensional manifold valued data from a given dataset. If dataset
points are sampled according to an unknown probability measure on the
DM, we face with statistical problems about manifold valued data. In the
talk we will provide a short review of statistical problems regarding
high-dimensional manifold valued data and their solutions.