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A Modified Extreme Learning ANFIS for Higher Dimensional Regression Problems

机译:一种改进的极端学习ANFI,用于高维回归问题

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Extreme learning adaptive neuro-fuzzy inference system (ELANFIS) is a new learning machine which integrates reduction of computational complexity of extreme learning machine (ELM) concept to ANFIS. ELANFIS uses Takagi-Sugeno-Kang (TSK) fuzzy inference system like ANFIS which gives accurate models. Grid partitioning is used in both ANFIS and ELANFIS which has the disadvantage of curse of dimensionality. In this paper, a modified ELANFIS using sub-clustering for input space partitioning is proposed for higher dimensional regression problems. In the proposed structure, sub-clustering is used for input space partitioning of the network. The cluster centers are used to obtain the premise parameters of the ELANFIS, such that it satisfies the constraints for obtaining distinguishable membership functions. Performance of the modified ELANFIS is compared with ANFIS and ELANFIS for real-world higher dimensional regression problems. The modified ELANFIS overcomes the curse of dimensionality with better interpretability compared to ANFIS and ELANFIS.
机译:极端学习自适应神经模糊推理系统(Elanfis)是一款新的学习机,可以将极端学习机(ELM)概念的计算复杂性降低到ANFIS。 Elanfis使用Takagi-Sugeno-kang(TSK)模糊推理系统,如ANFI,可以提供准确的模型。栅栏分区用于ANFIS和ELANFIS,其具有维度的诅咒的缺点。在本文中,提出了一种用于输入空间分区的子聚类的修改的Elanfis用于更高的维度回归问题。在所提出的结构中,子簇用于网络的输入空间分区。群集中心用于获得ELANFI的前提参数,使得它满足获得可区分隶属函数的约束。改性Elanfis的性能与ANFIS和Elanfis进行了比较,以实现现实世界的高度回归问题。改良的Elanfis克服了与ANFIS和ELANFI相比更好地解释性的维度诅咒。

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