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A hybrid dynamic exploitation barebones particle swarm optimisation algorithm for time series segmentation

机译:时间序列分割的混合动态开发准系统粒子群优化算法

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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. (C) 2019 Elsevier B.V. All rights reserved.
机译:大的时间序列难以挖掘和预处理,因此以最小的信息损失减少它们的点数是一个活跃的研究领域。本文提出了一种基于时间序列分割的新方法,包括针对此问题的粒子群优化算法(PSO)的适应,以及更高级的PSO版本,例如准系统PSO(BBPSO)及其开发版本(BBePSO)。此外,推导了一种称为动态开发准系统PSO(DBBePSO)的新颖算法,该算法更新了整个世代中社会和认知组件的重要性。通过考虑基于两种众所周知的标准分段算法(自下而上和自上而下)的组合的最终局部搜索步骤,可以进一步改善所有这些算法。使用来自不同应用领域的15个时间序列对不同方法的性能进行了评估,结果表明,该新算法(DBBePSO)及其混合版本(HDBBePSO)优于其他分割技术。 (C)2019 Elsevier B.V.保留所有权利。

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