Mullineaux, David R. and Irwin, Gareth (2017) Error and anomaly detection for intra-participant time-series data. International Biomechanics, 4 (1). pp. 28-35. ISSN 2333-5432
Full content URL: http://dx.doi.org/10.1080/23335432.2017.1348913
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27837 Error and anomaly detection for intra participant time series data.pdf - Whole Document Available under License Creative Commons Attribution 4.0 International. 1MB |
Item Type: | Article |
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Item Status: | Live Archive |
Abstract
Identification of errors or anomalous values, collectively considered outliers, assists in exploring data or through removing outliers improves statistical analysis. In biomechanics, outlier detection methods have explored the ‘shape’ of the entire cycles, although exploring fewer points using a ‘moving-window’ may be advantageous. Hence, the aim was to develop a moving-window method for detecting trials with outliers in intra-participant time-series data. Outliers were detected through two stages for the strides (mean 38 cycles) from treadmill running. Cycles were removed in stage 1 for one-dimensional (spatial) outliers at each time point using the median absolute deviation, and in stage 2 for two-dimensional (spatial–temporal) outliers using a moving window standard deviation. Significance levels of the t-statistic were used for scaling. Fewer cycles were removed with smaller scaling and smaller window size, requiring more stringent scaling at stage 1 (mean 3.5 cycles removed for 0.0001 scaling) than at stage 2 (mean 2.6 cycles removed for 0.01 scaling with a window size of 1). Settings in the supplied Matlab code should be customised to each data set, and outliers assessed to justify whether to retain or remove those cycles. The method is effective in identifying trials with outliers in intra-participant time series data.
Keywords: | Biomechanics, Kinematics, Kinetics, Outlier, Statistics, Variability |
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Subjects: | C Biological Sciences > C600 Sports Science G Mathematical and Computer Sciences > G300 Statistics |
Divisions: | College of Social Science > School of Sport and Exercise Science |
ID Code: | 27837 |
Deposited On: | 12 Jul 2017 13:31 |
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