A tail inequality for quadratic forms of subgaussian random vectors
Sham M. Kakade (Microsoft Research New England)
Tong Zhang (Rutgers University)
Abstract
This article proves an exponential probability tail inequality for positive semidefinite quadratic forms in a subgaussian random vector. The bound is analogous to one that holds when the vector has independent Gaussian entries.
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Pages: 1-6
Publication Date: November 2, 2012
DOI: 10.1214/ECP.v17-2079
References
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