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Proximity Fuzzy Clustering and Its Application to Time Series Clustering and Prediction

机译:接近模糊聚类及其在时间序列聚类和预测中的应用

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A new time series prediction architecture is introduced using a fuzzy inference system (FIS) and a new framework for fuzzy relational clustering of time series. The FIS is used to predict future samples in a time series where recurrent neural networks comprise the consequents of the rules. The antecedents come in the form of fuzzy relations; however, previous approaches such as FCM build these antecedents in a Euclidean feature space which is very limiting and not well suited to the problem of clustering time series. Our approach to learning the antecedents of the rules involves clustering time series using proximity values, indicative of closeness. A variant of the classical correlation is used to measure proximity. Our objective is to investigate and evaluate the application of proximity fuzzy clustering in the domain of time series prediction by comparing its performance against several commonly used time series prediction models.
机译:使用模糊推理系统(FIS)引入了新的时序序列预测架构,以及时间序列的模糊关系聚类新框架。 FIS用于预测经常性神经网络包括规则的后果的时间序列中的未来样本。防止者以模糊关系的形式出现;然而,以前的方法如FCM在欧几里德特征空间中建立这些前书,这非常有限,并且不适合聚类时间序列的问题。我们学习规则的前提的方法涉及使用邻近值的聚类时间序列,指示接近。使用经典相关的变型来测量接近度。我们的目的是通过比较其对几种常用时间序列预测模型的性能来研究和评估时间序列预测领域的邻近模糊聚类的应用。

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