A Comparative Study between an Offline and an Online Fuzzy Model

I. Luna, S. Soares, R. Ballini
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引用次数: 1

Abstract

This paper suggests and compares two approaches for building a fuzzy-rule based system for time series modeling and forecasting. The first one is based on a constructive offline learning (C-FSM). The second one, is based on an adaptive online learning process (A-FSM). Both models have its general architecture based on a fuzzy rule based system, and its respective learning algorithms are based on the EM optimization technique. Because the C-FSM is trained in an offline learning, it results in a more accurate model. However, the A-FSM has a faster learning process, since it is not necessary to retrain it with all data available at each iteration. The A-FSM also provides a more compact structure, being its learning and structure generation, great advantages in terms of time process and computational effort, when compared to the constructive approach. Results applying both techniques for building time series models show their efficiency, having each one of them important advantages when compared. The constructive offline model gets better accuracy, but, the online one, has a faster learning and a provides a simpler final structure.
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离线与在线模糊模型的比较研究
本文提出并比较了两种建立基于模糊规则的时间序列建模和预测系统的方法。第一种是基于建设性的离线学习(C-FSM)。第二种是基于自适应在线学习过程(A-FSM)。两种模型的总体结构都是基于模糊规则的系统,各自的学习算法都是基于EM优化技术。由于C-FSM是在离线学习中训练的,因此它会产生更准确的模型。然而,a - fsm有一个更快的学习过程,因为它不需要在每次迭代中使用所有可用的数据重新训练它。与构造方法相比,a - fsm还提供了更紧凑的结构,因为它的学习和结构生成在时间过程和计算工作量方面具有很大的优势。应用这两种技术建立时间序列模型的结果显示了它们的效率,在比较时它们各自具有重要的优势。建设性的离线模型具有更好的准确性,而在线模型具有更快的学习速度和更简单的最终结构。
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