Using dynamic time warping to find patterns in time series
Donald J. Berndt(New York University), James Clifford(New York University)
Knowledge Discovery and Data Mining
July 31, 1994
Cited by 2,898
Abstract
Knowledge discovery in databases presents many interesting challenges within the context of providing computer tools for exploring large data archives. Electronic data repositories are growing quickly and contain data from commercial, scientific, and other domains. Much of this data is inherently temporal, such as stock prices or NASA telemetry data. Detecting patterns in such data streams or time series is an important knowledge discovery task. This paper describes some preliminary experiments with a dynamic programming approach to the problem. The pattern detection algorithm is based on the dynamic time warping technique used in the speech recognition field.
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