Title
A hybrid dynamic exploitation barebones particle swarm optimisation algorithm for time series segmentation
Abstract
Large time series are difficult to be mined and preprocessed, hence reducing their number of points with minimum information loss is an active field of study. This paper proposes new methods based on time series segmentation, including the adaptation of the particle swarm optimisation algorithm (PSO) to this problem, and more advanced PSO versions, such as barebones PSO (BBPSO) and its exploitation version (BBePSO). Moreover, a novel algorithm is derived, referred to as dynamic exploitation barebones PSO (DBBePSO), which updates the importance of the social and cognitive components throughout the generations. All these algorithms are further improved by considering a final local search step based on the combination of two well-known standard segmentation algorithms (Bottom-Up and Top-Down). The performance of the different methods is evaluated using 15 time series from various application fields, and the results show that the novel algorithm (DBBePSO) and its hybrid version (HDBBePSO) outperform the rest of segmentation techniques.
Year
DOI
Venue
2019
10.1016/j.neucom.2018.05.129
Neurocomputing
Keywords
Field
DocType
Time series size reduction,Time series segmentation,Particle swarm optimisation,Hybrid algorithm
Particle swarm optimization,Time-series segmentation,Information loss,Pattern recognition,Segmentation,Algorithm,Artificial intelligence,Local search (optimization),Mathematics
Journal
Volume
ISSN
Citations 
353
0925-2312
1
PageRank 
References 
Authors
0.34
0
4
Name
Order
Citations
PageRank
Antonio M. Durán-Rosal110.34
Pedro A. Gutiérrez2413.16
A. Carmona-Poyato326314.87
César Hervás-Martínez479678.92