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📄 Abstract
Abstract: In this work, we consider the problem of identifying an unknown linear
dynamical system given a finite hypothesis class. In particular, we analyze the
effect of the excitation input on the sample complexity of identifying the true
system with high probability. To this end, we present sample complexity lower
bounds that capture the choice of the selected excitation input. The sample
complexity lower bound gives rise to a system theoretic condition to determine
the potential benefit of experiment design. Informed by the analysis of the
sample complexity lower bound, we propose a persistent excitation (PE)
condition tailored to the considered setting, which we then use to establish
sample complexity upper bounds. Notably, the \acs{PE} condition is weaker than
in the case of an infinite hypothesis class and allows analyzing different
excitation inputs modularly. Crucially, the lower and upper bounds share the
same dependency on key problem parameters. Finally, we leverage these insights
to propose an active learning algorithm that sequentially excites the system
optimally with respect to the current estimate, and provide sample complexity
guarantees for the presented algorithm. Concluding simulations showcase the
effectiveness of the proposed algorithm.