ELKI in time: ELKI 0.2 for the performance evaluation of distance measures for time series

Abstract

Abstract. ELKI is a unified software framework, designed as a tool suitable for evaluation of different algorithms on high dimensional real-valued feature-vectors. A special case of high dimensional real-valued feature-vectors are time series data where traditional distance measures like Lp-distances can be applied. However, also a broad range of spe-cialized distance measures like, e.g., dynamic time-warping, or general-ized distance measures like second order distances, e.g., shared-nearest-neighbor distances, have been proposed. The new version ELKI 0.2 now is extended to time series data and offers a selection of these distance measures. It can serve as a visualization- and evaluation-tool for the behavior of different distance measures on time series data.

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Last time updated on 30/10/2017

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