Towards Inductive Learning of Complex Fuzzy Inference Systems

J. Man, Z. Chen, S. Dick
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引用次数: 26

Abstract

Complex fuzzy logic is an extension to type-1 fuzzy sets that has recently been developed. To date, no practical applications of complex fuzzy logic have been developed, possibly due to the difficulty of eliciting expert knowledge for both the magnitude and phase of a complex fuzzy set. We believe that practical applications of complex fuzzy logic require inductive learning. We are taking a first step towards this by building an inductive learning algorithm ANCFIS (Adaptive Neuro Fuzzy Complex Inference System), which hybridizes the theory of complex fuzzy inference and ANFIS. We believe that complex fuzzy sets will be a remarkably efficient way of modeling approximately periodic data. Thus, our proposed application of ANCFIS is in time series forecasting. We present an introduction to ANCFIS, its structure and computational formulas. The ANCFIS architecture is tested against three commonly cited time series datasets. Preliminary results show that ANCFIS is indeed able to model relatively periodic data as expected.
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复杂模糊推理系统的归纳学习研究
复模糊逻辑是最近发展起来的对1型模糊集的扩展。迄今为止,尚未开发复杂模糊逻辑的实际应用,可能是由于难以获得复杂模糊集的大小和相位的专家知识。我们认为复杂模糊逻辑的实际应用需要归纳学习。我们通过建立一个归纳学习算法ANCFIS(自适应神经模糊复杂推理系统)迈出了第一步,它混合了复杂模糊推理和ANFIS理论。我们相信复模糊集将是一种非常有效的近似周期数据建模方法。因此,我们提出的ANCFIS应用于时间序列预测。我们介绍了ANCFIS,它的结构和计算公式。ANCFIS架构针对三个常用的时间序列数据集进行了测试。初步结果表明,ANCFIS确实能够像预期的那样对相对周期性的数据进行建模。
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