High-dimensional change-point estimation: Combining filtering with convex optimization
- Creators
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Soh, Yong Sheng
- Chandrasekaran, Venkat
Abstract
We consider change-point estimation in a sequence of high-dimensional signals given noisy observations. Classical approaches to this problem such as the filtered derivative method are useful for sequences of scalar-valued signals, but they have undesirable scaling behavior in the high-dimensional setting. However, many high-dimensional signals encountered in practice frequently possess latent low-dimensional structure. Motivated by this observation, we propose a technique for high-dimensional change-point estimation that combines the filtered derivative approach from previous work with convex optimization methods based on atomic norm regularization, which are useful for exploiting structure in high-dimensional data. Our algorithm is applicable in online settings as it operates on small portions of the sequence of observations at a time, and it is well-suited to the high-dimensional setting both in terms of computational scalability and of statistical efficiency. The main result of this paper shows that our method performs change-point estimation reliably as long as the product of the smallest-sized change (the Euclidean-norm-squared of the difference between signals at a change-point) and the smallest distance between change-points (number of time instances) is larger than a Gaussian width parameter that characterizes the low-dimensional complexity of the underlying signal sequence. A full version of this paper is available online [1].
Additional Information
© 2015 IEEE.Attached Files
Submitted - 1412.3731.pdf
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Additional details
- Eprint ID
- 60874
- DOI
- 10.1109/ISIT.2015.7282435
- Resolver ID
- CaltechAUTHORS:20151007-111059602
- Created
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2015-10-07Created from EPrint's datestamp field
- Updated
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2021-11-10Created from EPrint's last_modified field