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arxiv: 1507.00513 · v1 · pith:UCL4BAQWnew · submitted 2015-07-02 · 🧮 math.ST · stat.ML· stat.TH

Learning the intensity of time events with change-points

classification 🧮 math.ST stat.MLstat.TH
keywords convexsegmentationchange-pointsfastintensityintroducelearningpenalization
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We consider the problem of learning the inhomogeneous intensity of a counting process, under a sparse segmentation assumption. We introduce a weighted total-variation penalization, using data-driven weights that correctly scale the penalization along the observation interval. We prove that this leads to a sharp tuning of the convex relaxation of the segmentation prior, by stating oracle inequalities with fast rates of convergence, and consistency for change-points detection. This provides first theoretical guarantees for segmentation with a convex proxy beyond the standard i.i.d signal + white noise setting. We introduce a fast algorithm to solve this convex problem. Numerical experiments illustrate our approach on simulated and on a high-frequency genomics dataset.

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