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I'm using Dynamic Time Warping (DTW) as a distance measure for K Nearest Neighbour (kNN) machine learning algorithm. In WEKA the kNN algorithm has cut off value to act as an early abandon if the distance that is currently being calculated is bigger than a previous distance.

My problem is that I am not sure how to implement this early abandon with DTW without doing all of the calculations. How can I know for certain that the final distance will be bigger than the cut off?

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You could try some lower bounding for Dynamic Time Warping, like the LB_Keogh lower bound: http://www.cs.ucr.edu/~eamonn/LB_Keogh.htm

The basic idea is to findi a distance measure that is a lower bound of DTW, and is computationally (a lot) cheaper.

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