For the majority of data mining applications, there are no models of data which would facilitate the task of comparing records of time series. We propose a generic approach to comparing noise time series using the largest deviations from consistent statistical behaviour. For this purpose we use a powerful framework based on wavelet decomposition, which allows filtering polynomial bias, while capturing the essential singular behaviour. In addition, we are able to reveal scale-wise ranking of singular events including their scale free characteristic: the Hoelder exponent.

IEEE Computer Society Press
International Conference on Database and Expert Systems Applications
Database Architectures

Struzik, Z. R., & Siebes, A. (1999). Measuring Time Series' Similarity through Large Singular Features Revealed with Wavelet Transformation. In Proceedings of International Conference on Database and Expert Systems Applications 1999 (DEXA 10) (pp. 162–166). IEEE Computer Society Press.