Support Recovery for the Drift Coefficient of High-Dimensional Diffusions

Consider the problem of learning the drift coefficient of a -dimensional stochastic differential equation from a sample path of length . We assume that the drift is parametrized by a high-dimensional vector, and study the support recovery problem when both and can tend to infinity. In particular, we prove a general lower bound on the sample-complexity by using a characterization of mutual information as a time integral of conditional variance, due to Kadota, Zakai, and Ziv. For linear stochastic differential equations, the drift coefficient is parametrized by a matrix which describes which degrees of freedom interact under the dynamics. In this case, we analyze a -regularized least squares estimator and prove an upper bound on that nearly matches the lower bound on specific classes of sparse matrices.
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