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Recurrent type-1 fuzzy functions approach for time series forecasting

机译:经常性类型-1模糊功能的时间序列预测方法

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摘要

Forecasting the future values of a time series is a common research topic and is studied using probabilistic and non-probabilistic methods. For probabilistic methods, the autoregressive integrated moving average and exponential smoothing methods are commonly used, whereas for non-probabilistic methods, artificial neural networks and fuzzy inference systems (FIS) are commonly used. There are numerous FIS methods. While most of these methods are rule-based, there are a few methods that do not require rules, such as the type-1 fuzzy function (T1FF) approach. While it is possible to encounter a method such as an autoregressive (AR) model integrated with a T1FF, no method that includes T1FF and the moving average (MA) model in one algorithm has yet been proposed. The aim of this study is to improve forecasting by taking the disturbance terms into account. The input dataset is organized using the following variables. First, the lagged values of the time series are used for the AR model. Second, a fuzzy c-means clustering algorithm is used to cluster the inputs. Third, for the MA, the residuals of fuzzy functions are used. Hence, AR, MA, and the degree of memberships of the objects are included in the input dataset. Because the objective function is not derivative, particle swarm optimization is preferable for solving it. The results on several datasets show that the proposed method outperforms most of the methods in literature.
机译:预测时间序列的未来值是一个常见的研究主题,并使用概率和非概率方法研究。对于概率方法,常用的自回归综合移动平均线和指数平滑方法是常用的,而对于非概率方法,通常使用人工神经网络和模糊推理系统(FIS)。有许多FIS方法。虽然大多数这些方法都是基于规则的,但有一些方法不需要规则,例如类型-1模糊函数(T1FF)方法。虽然可以遇到诸如与T1FF集成的自回归(AR)模型的方法,但是没有提出一种在一个算法中包括T1FF的方法和移动平均(MA)模型。本研究的目的是通过将干扰术语考虑到扰动来改善预测。输入数据集使用以下变量组织。首先,时间序列的滞后值用于AR模型。其次,模糊C-Means聚类算法用于聚类输入。第三,对于MA,使用模糊功能的残余。因此,AR,MA和对象的成员资格包括在输入数据集中。因为目标函数不是衍生,所以粒子群优化优选用于解决它。若干数据集的结果表明,该方法优于大多数文献中的方法。

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