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Learning Time Series Detection Models from Temporally Imprecise Labels.


ABSTRACT: In this paper, we consider the problem of learning time series detection models from temporally imprecise labels. In this problem, the data consist of a set of input time series, and supervision is provided by a sequence of noisy time stamps corresponding to the occurrence of positive class events. Such temporally imprecise labels occur in areas like mobile health research when human annotators are tasked with labeling the occurrence of very short duration events. We propose a general learning framework for this problem that can accommodate different base classifiers and noise models. We present results on real mobile health data showing that the proposed framework significantly outperforms a number of alternatives including assuming that the label time stamps are noise-free, transforming the problem into the multiple instance learning framework, and learning on labels that were manually aligned.

SUBMITTER: Adams RJ 

PROVIDER: S-EPMC6241530 | biostudies-literature | 2017 Apr

REPOSITORIES: biostudies-literature

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Learning Time Series Detection Models from Temporally Imprecise Labels.

Adams Roy J RJ   Marlin Benjamin M BM  

Proceedings of machine learning research 20170401


In this paper, we consider the problem of learning time series detection models from temporally imprecise labels. In this problem, the data consist of a set of input time series, and supervision is provided by a sequence of noisy time stamps corresponding to the occurrence of positive class events. Such temporally imprecise labels occur in areas like mobile health research when human annotators are tasked with labeling the occurrence of very short duration events. We propose a general learning f  ...[more]

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