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First provide a summary of the paper, and then address the following criteria: Quality, clarity, originality and significance. This paper proposes an algorithm to learn a distance metric for time series alignment. The proposed method falls into the structured output prediction framework, and is solved by a combination of convex optimization and dynamic programming. The method is evaluated on synthetic and realistic audio alignment tasks, and demonstrates significant improvement over baseline methods. Overall, this paper presents an interesting method for a real problem faced by practitioners dealing with time-series alignment tasks. The paper is generally well written and easy to follow, although a few points could be stated more clearly.
Metric Learning for Temporal Sequence Alignment
Rémi Lajugie, Damien Garreau, Francis Bach, Sylvain Arlot
In this paper, we propose to learn a Mahalanobis distance to perform alignment of multivariate time series. The learning examples for this task are time series for which the true alignment is known. We cast the alignment problem as a structured prediction task, and propose realistic losses between alignments for which the optimization is tractable. We provide experiments on real data in the audio-toaudio context, where we show that the learning of a similarity measure leads to improvements in the performance of the alignment task. We also propose to use this metric learning framework to perform feature selection and, from basic audio features, build a combination of these with better alignment performance.
Metric Learning for Temporal Sequence Alignment Damien Garreau Rémi Lajugie ENS Francis Bach
In this paper, we propose to learn a Mahalanobis distance to perform alignment of multivariate time series. The learning examples for this task are time series for which the true alignment is known. We cast the alignment problem as a structured prediction task, and propose realistic losses between alignments for which the optimization is tractable. We provide experiments on real data in the audio-toaudio context, where we show that the learning of a similarity measure leads to improvements in the performance of the alignment task. We also propose to use this metric learning framework to perform feature selection and, from basic audio features, build a combination of these with better alignment performance.
Metric Learning for Temporal Sequence Alignment
Garreau, Damien, Lajugie, Rémi, Arlot, Sylvain, Bach, Francis
In this paper, we propose to learn a Mahalanobis distance to perform alignment of multivariate time series. The learning examples for this task are time series for which the true alignment is known. We cast the alignment problem as a structured prediction task, and propose realistic losses between alignments for which the optimization is tractable. We provide experiments on real data in the audio-to-audio context, where we show that the learning of a similarity measure leads to improvements in the performance of the alignment task. We also propose to use this metric learning framework to perform feature selection and, from basic audio features, build a combination of these with better alignment performance.