Choosing the Right Norm for Change Point Detection in Functional Data
Abstract
We consider the problem of detecting a change point in a sequence of mean functions from a functional time series. We propose an L1 norm based methodology and establish its theoretical validity both for classical and for relevant hypotheses. We compare the proposed method with currently available methodology that is based on the L2 and supremum norms. Additionally we investigate the asymptotic behaviour under the alternative for all three methods and showcase both theoretically and empirically that the L1 norm achieves the best performance in a broad range of scenarios. We also propose a power enhancement component that improves the performance of the L1 test against sparse alternatives. Finally we apply the proposed methodology to both synthetic and real data.
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