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. Proceedings of International Conference on Database and Expert Systems Applications 1999 (DEXA 10), 162–166.