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AMP: a new time-frequency feature extraction method for intermittent time-series data

Barrack, Duncan S.; Goulding, James; Hopcraft, Keith; Preston, Simon; Smith, Gavin

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Authors

Duncan S. Barrack

Keith Hopcraft

SIMON PRESTON simon.preston@nottingham.ac.uk
Professor of Statistics and Applied Mathematics

GAVIN SMITH GAVIN.SMITH@NOTTINGHAM.AC.UK
Associate Professor



Abstract

The characterisation of time-series data via their most salient features is extremely important in a range of machine learning task, not least of all with regards to classification and clustering. While there exist many feature extraction techniques suitable for non-intermittent time-series data, these approaches are not always appropriate for intermittent time-series data, where intermittency is characterized by constant values for large periods of time punctuated by sharp and transient increases or decreases in value.

Motivated by this, we present aggregation, mode decomposition and projection (AMP) a feature extraction technique particularly suited to intermittent time-series data which contain time-frequency patterns. For our method all individual time-series within a set are combined to form a non-intermittent aggregate. This is decomposed into a set of components which represent the intrinsic time-frequency signals within the data set. Individual time-series can then be _t to these components to obtain a set of numerical features that represent their intrinsic time-frequency patterns. To demonstrate the effectiveness of AMP, we evaluate against the real word task of clustering intermittent time-series data. Using synthetically generated data we show that a clustering approach which uses the features derived from AMP significantly outperforms traditional clustering methods. Our technique is further exemplified on a real world data set where AMP can be used to discover groupings of individuals which correspond to real world sub-populations.

Citation

Barrack, D. S., Goulding, J., Hopcraft, K., Preston, S., & Smith, G. (2015). AMP: a new time-frequency feature extraction method for intermittent time-series data.

Conference Name 1st International Workshop on Mining and Learning from Time Series (MiLeTS)
End Date Aug 13, 2015
Acceptance Date Jul 6, 2015
Publication Date Aug 10, 2015
Deposit Date Jun 1, 2018
Publicly Available Date Jun 1, 2018
Peer Reviewed Peer Reviewed
Keywords time-series, feature extraction, intermittence
Public URL https://nottingham-repository.worktribe.com/output/759195
Related Public URLs http://www-bcf.usc.edu/~liu32/milets/
http://www.kdd.org/kdd2015/calls.html
https://dl.acm.org/citation.cfm?id=2783258
Additional Information Workshop at SIGKDD Workshop on Mining and Learning from Time Series (MiLeTS) (MiLeTS workshop in conjunction with KDD' 15).

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