A Haar Wavelet-based Multi-resolution Representation Method of Time Series Data
Permanent lenke
https://hdl.handle.net/10037/8947Dato
2015-01-10Type
Peer reviewedJournal article
Tidsskriftartikkel
Forfatter
Muhammad Fuad, Muhammad MarwanSammendrag
Similarity search of time series can be efficiently handled through a multi-resolution representation scheme
which offers the possibility to use pre-computed distances that are calculated and stored at indexing time
and then utilized at query time together with filters in the form of exclusion conditions which speed up the
search. In this paper we introduce a new multi-resolution representation and search framework of time
series. Compared with our previous multi-resolution methods which use first degree polynomials to reduce
the dimensionality of the time series at different resolution levels, the novelty of this work is that it applies
Haar wavelets to represent the time series. This representation is particularly adapted to our multi-resolution
approach as discrete wavelet transforms have the ability of reflecting the local and global information
content at every resolution level thus enhancing the performance of the similarity search algorithm, which is
what we have shown in this paper through extensive experiments on different datasets.
Beskrivelse
Published version. Source at http://doi.org/10.5220/0005307006200626.