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A Meta-cognitive Recurrent Fuzzy Inference System with Memory Neurons (McRFIS-MN) and its Fast Learning Algorithm for Time Series Forecasting

机译:具有记忆神经元的元认知递归模糊推理系统(McRFIS-MN)及其快速学习算法,用于时间序列预测

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In this paper, a Meta-cognitive Recurrent Fuzzy Inference System is proposed where recurrence is brought using Memory type Neurons (McRFIS-MN) to retain the effect of all past instances, while the meta-cognition component is employed to control the learning process, by deciding what-to-learn, when-to-learn and how-to-learn from the training data. The McRFIS-MN model has five layers, and Memory Neurons (MN) are employed only in the layers handling crisp values. The antecedent parameters are set randomly while only the consequent weights of the network are updated using a one-shot type projection based learning algorithm through time (PBLT) which makes the learning very fast. The performance evaluation of McRFIS-MN has been carried out using benchmark problems in the areas of nonlinear system identification and time-series forecasting. The results are evaluated against some of the most popular neural fuzzy methods and the obtained results indicate that McRFIS-MN performs better in terms of speed while achieving better or similar accuracy.
机译:本文提出了一种元认知递归模糊推理系统,该系统使用记忆型神经元(McRFIS-MN)来实现递归,以保留所有过去实例的影响,同时采用元认知组件来控制学习过程,通过确定训练数据中的学习内容,学习时间和学习方法。 McRFIS-MN模型有五层,而记忆神经元(MN)仅用于处理清晰值的层。使用基于时间的单次基于投影的学习算法(PBLT)仅更新网络的后续权重,同时仅对网络的后续权重进行更新,从而使学习变得非常快。 McRFIS-MN的性能评估是使用非线性系统识别和时间序列预测领域中的基准问题进行的。针对某些最流行的神经模糊方法对结果进行了评估,获得的结果表明McRFIS-MN在速度方面表现更好,同时达到了更好或相似的精度。

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