IncDTW-package: Incremental Dynamic Time Warping

IncDTW-packageR Documentation

Incremental Dynamic Time Warping

Description

The Dynamic Time Warping (DTW) distance for time series allows non-linear alignments of time series to match similar patterns in time series of different lengths and or different speeds. Beside the traditional implementation of the DTW algorithm, the specialties of this package are, (1) the incremental calculation, which is specifically useful for life data streams due to computationally efficiency, (2) the vector based implementation of the traditional DTW algorithm which is faster because no matrices are allocated and is especially useful for computing distance matrices of pairwise DTW distances for many time series and (3) the combination of incremental and vector-based calculation.

Details

Main features:

  • Incremental Calculation, idtw, idtw2vec and increment

  • Detect k-nearest subsequences in longer time series, rundtw

  • Matrix-based dtw and Vector-based dtw2vec implementation of the DTW algorithm

  • Sakoe Chiba warping window

  • Early abandoning and lower bounding

  • Support for multivariate time series

  • Fast calculation of a distance matrix of pairwise DTW distances for clustering or classification of many multivariate time series, dtw_dismat

  • Aggregate cluster members with dba or get the centroid with centroid

  • C++ in the heart thanks to Rcpp

Author(s)

Maximilian Leodolter

Maintainer: Maximilian Leodolter <maximilian.leodolter@gmail.com>

References

  • Leodolter, M.; Pland, C.; Brändle, N; IncDTW: An R Package for Incremental Calculation of Dynamic Time Warping. Journal of Statistical Software, 99(9), 1-23. doi: 10.18637/jss.v099.i09

  • Sakoe, H.; Chiba, S., Dynamic programming algorithm optimization for spoken word recognition, Acoustics, Speech, and Signal Processing [see also IEEE Transactions on Signal Processing], IEEE Transactions on , vol.26, no.1, pp. 43-49, Feb 1978. http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=1163055

See Also

https://ieeexplore.ieee.org/document/1163055/

https://en.wikipedia.org/wiki/Dynamic_time_warping


IncDTW documentation built on March 18, 2022, 6:43 p.m.