Friday, April 8, 2011 |
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The Convex Geometry of Inverse Problems |
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Deducing the state or structure of a system from partial, noisy measurements is a
fundamental task throughout the sciences and engineering. The resulting inverse
problems are often ill-posed because there are fewer measurements available than
the ambient dimension of the model to be estimated. In practice, however, many
interesting signals or models contain few degrees of freedom relative to their
ambient dimension: a small number of genes may constitute the signature of a
disease, very few parameters may specify the correlation structure of a time
series, or a sparse collection of geometric constraints may determine a molecular
configuration. Discovering, leveraging, or recognizing such low-dimensional
structure plays an important role in making inverse problems well-posed.
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