![]() |
Inference for Change-Point and Related ProcessesInference for Change-Point and Related Processes Author: Cambridge University
In many applications data is collected over time or can be ordered with respect to some other criteria (e.g. position along a chromosome). Often the statistical properties, such as mean or variance, of the data will change along data. This feature of data is known as non-stationarity. An important and challenging problem is to be able to model and infer how these properties change. Examples occur in environmental applications (e.g. detecting changes in ecological systems due to climatic conditions crossing some critical thresholds), signal processing (e.g. structural analysis of EEG signals), epidemiology (e.g. early detection of hospital infections from changes in patients antibody levels), bioinformatics (e.g. detecting changes in copy number variation), and finance (e.g. changing volatility). As technology advances, and ever larger and complex data are collected, the need to model changes in the statistical properties of the data, and the difficulty of making inference for these models increases. Read more at www.newton.ac.uk/programmes/ICP/ Language: en Genres: Education Contact email: Get it Feed URL: Get it iTunes ID: Get it |
Listen Now...
A primal dual method for inverse problems in MRI with non-linear forward operators
Friday, 14 February, 2014
Valkonen, T (University of Cambridge) Friday 07 February 2014, 14:30-15:00



