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arxiv 2204.07403 v1 pith:ANQBS2RW submitted 2022-04-15 cs.LG

Deep learning model solves change point detection for multiple change types

classification cs.LG
keywords changedataapproachdetectionpointpointsbeforecommon
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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A change points detection aims to catch an abrupt disorder in data distribution. Common approaches assume that there are only two fixed distributions for data: one before and another after a change point. Real-world data are richer than this assumption. There can be multiple different distributions before and after a change. We propose an approach that works in the multiple-distributions scenario. Our approach learn representations for semi-structured data suitable for change point detection, while a common classifiers-based approach fails. Moreover, our model is more robust, when predicting change points. The datasets used for benchmarking are sequences of images with and without change points in them.

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