Affiliation:
1. Arizona State University, Tempe, AZ
2. University of Torino, Torino, Italy
Abstract
Many applications generate and consume temporal data and retrieval of time series is a key processing step in many application domains. Dynamic time warping (DTW) distance between time series of size
N
and
M
is computed relying on a dynamic programming approach which creates and fills an
N x M
grid to search for an optimal
warp path
. Since this can be costly, various heuristics have been proposed to cut away the potentially unproductive portions of the DTW grid. In this paper, we argue that time series often carry structural features that can be used for identifying
locally relevant
constraints to eliminate redundant work. Relying on this observation, we propose
salient feature
based sDTW algorithms which first identify robust salient features in the given time series and then find a consistent alignment of these to establish the boundaries for the warp path search. More specifically, we propose alternative
fixed core&adaptive width, adaptive core&fixed width
, and
adaptive core&adaptive width
strategies which enforce different constraints reflecting the high level structural characteristics of the series in the data set. Experiment results show that the proposed sDTW algorithms help achieve much higher accuracy in DTW computation and time series retrieval than
fixed core & fixed width
algorithms that do not leverage local features of the given time series.
Subject
General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development
Cited by
29 articles.
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