2004, Vol.7, No.4, pp.314-331
Kernel methods such as support vector machines and
other sparse approximation techniques are reviewed with an
emphasis on application to random processes. Some of the kernel
properties are highlighted and space dimensionality reduction
approaches that are conceptually simple and computationally
feasible are proposed. The stochastic analysis of random phenomena
is often performed in a context characterized by non-standard
probabilistic assumptions, far for instance from stationarity and
Gaussianity. Real-life applications require statistical model
conditions such as strong forms of dependence, non-stationarity,
non-gaussianity; these features often prevent from using classical
statistical inference procedures or model-building strategies, and
instead involve computational techniques relying on simulations
and numerical approximation. One of the problems here investigated
is how to cast these methodological instruments in a comprehensive
theoretical framework, and then achieve a suitable model
derivation and interpretation strategy. This contribution is of an
introductory nature and suggests directions for further advances
targeted to real applications, in particular when time series are
studied.
Key words:
random processes, reproducing kernel Hilbert spaces;
integral equations, support vector machines, sparse approximation
techniques, wavelets and frames, model selection
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