PIMS- UAlberta Statistics Colloquium: Don Estep
Topic
Formulation and solution of stochastic inverse problems for science and engineering models
Speakers
Details
Determining information about the state of a complex physical system from observations of its behavior is a fundamental problem in scientific inference and engineering design. Often, this can be formulated as the stochastic inverse problem of determining probability structures on parameters for a physics model corresponding to a probability structure on the output of the model. We describe the formulation and solution of stochastic inverse problems. Our approach yields a computationally tractable problem while avoiding alterations of the model like regularization and ad hoc assumptions about the probability structures. We present several examples, including a high-dimensional application to determination of parameter fields in storm surge models. We describe several extensions and on-going research.