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arxiv: 1510.04638 · v2 · pith:IMRKKVAUnew · submitted 2015-10-15 · 🧮 math.ST · stat.ME· stat.TH

Low-rank diffusion matrix estimation for high-dimensional time-changed L\'evy processes

classification 🧮 math.ST stat.MEstat.TH
keywords diffusionmatrixsigmaconvergenceestimationestimatorfixedhigh-dimensional
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The estimation of the diffusion matrix $\Sigma$ of a high-dimensional, possibly time-changed L\'evy process is studied, based on discrete observations of the process with a fixed distance. A low-rank condition is imposed on $\Sigma$. Applying a spectral approach, we construct a weighted least-squares estimator with nuclear-norm-penalisation. We prove oracle inequalities and derive convergence rates for the diffusion matrix estimator. The convergence rates show a surprising dependency on the rank of $\Sigma$ and are optimal in the minimax sense for fixed dimensions. Theoretical results are illustrated by a simulation study.

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