Abstract:
The proposed data mining method is designed to analyse the synchronisation behaviour of multiple time series with the Kuramoto model which we use to construct synchronisa...Show MoreMetadata
Abstract:
The proposed data mining method is designed to analyse the synchronisation behaviour of multiple time series with the Kuramoto model which we use to construct synchronisation trees. By transforming time series data with the Hilbert transform, the initial phases of multiple time series can be provided to the model and subsequently the synchronisation process is represented by a tree structure, which can then further be analysed, e.g., by comparing tree edit distances. The proposed analysis might be interesting in the context of neuroscience as brain activity of a subject is often represented by time series corresponding to different brain regions. Discovering certain synchronisation patterns is then useful, when alterations of those patterns can be observed in different pathologies or brain states.
Date of Conference: 08-11 November 2019
Date Added to IEEE Xplore: 13 January 2020
ISBN Information: