Change Point Detection by Cross-Entropy Maximization
Serre, Aurélien, Chételat, Didier, Lodi, Andrea
Many offline unsupervised change point detection algorithms rely on minimizing a penalized sum of segment-wise costs. We extend this framework by proposing to minimize a sum of discrepancies between segments. In particular, we propose to select the change points so as to maximize the cross-entropy between successive segments, balanced by a penalty for introducing new change points. We propose a dynamic programming algorithm to solve this problem and analyze its complexity. Experiments on two challenging datasets demonstrate the advantages of our method compared to three state-of-the-art approaches.
Sep-2-2020
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- Overview (1.00)
- Research Report > Promising Solution (0.34)