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arxiv: 2512.05337 · v2 · pith:O2BZVNK5new · submitted 2025-12-05 · 📊 stat.ML · cs.LG· cs.SY· eess.SY· math.OC

Symmetric Linear Dynamical Systems are Learnable from Few Observations

classification 📊 stat.ML cs.LGcs.SYeess.SYmath.OC
keywords observationsestimatorlinearsymmetricachievesanalyzeapplicationsconsider
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We consider the problem of learning the parameters of a $N$-dimensional stochastic linear dynamics under both full and partial observations from a single trajectory of time $T$. We introduce and analyze a new estimator that achieves a small maximum element-wise error on the recovery of symmetric dynamic matrices using only $T=\mathcal{O}(\log N)$ observations, irrespective of whether the matrix is sparse or dense. This estimator is based on the method of moments and does not rely on problem-specific regularization. This is especially important for applications such as structure discovery.

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