DocumentCode :
108345
Title :
Learning the Intensity of Time Events With Change-Points
Author :
Alaya, Mokhtar Z. ; Gaiffas, Stephane ; Guilloux, Agathe
Author_Institution :
Sorbonne Univ., Paris, France
Volume :
61
Issue :
9
fYear :
2015
fDate :
Sept. 2015
Firstpage :
5148
Lastpage :
5171
Abstract :
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 independent identically distributed 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 data set.
Keywords :
genomics; signal processing; white noise; change-points detection; convex problem; convex proxy; convex relaxation; counting process; data-driven weights; high-frequency genomics data set; inhomogeneous intensity; observation interval; segmentation prior; sharp tuning; sparse segmentation; standard independent identically distributed signal; stating oracle inequalities; time event intensity; weighted total-variation penalization; white noise setting; Approximation methods; Bioinformatics; Convergence; Estimation; Genomics; Tuning; White noise; Change-Points; Counting Processes; Counting processes; Total-Variation; change-points; oracle inequalities; total-variation;
fLanguage :
English
Journal_Title :
Information Theory, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9448
Type :
jour
DOI :
10.1109/TIT.2015.2448087
Filename :
7130649
Link To Document :
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