Skip to content. | Skip to navigation

Personal tools

Navigation

You are here: Home / Meetings / All Meetings / Adaptive Data Analysis and Sparsity

Adaptive Data Analysis and Sparsity

[This is a short program of the Institute for Pure & Applied Mathematics at UCLA] Data analysis is important and highly successful throughout science and engineering, indeed in any field that deals with time-dependent signals. For nonlinear and nonstationary data (i.e., data generated by a nonlinear, time-dependent process), however, current data analysis methods have significant limitations, especially for very large datasets. Recent research has addressed these limitations for data that has a sparse representation (i.e., for data that can be described by a only a few nonzero parameters) by exploiting methods such as compressed sensing, TV-based denoising, multiscale analysis, synchrosqueezed wavelet transform, nonlinear optimization, randomized algorithms and statistical methods. This workshop will bring together researchers from mathematics, signal processing, computer science and data application fields to promote and expand this research direction. Determination of trend and instantaneous frequency for nonlinear and non-stationary data are examples of the topics that the workshop will address. This workshop will include a poster session; a request for posters will be sent to registered participants in advance of the workshop.
When 28 January 2013 12:25 PM to
01 February 2013 12:25 PM
Where Los Angeles CA USA
Add event to calendar vCal
iCal

More information about this event…