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A note on model-free regression capabilities of fuzzy systems

机译:关于模糊系统的无模型回归能力的说明

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摘要

Nonparametric estimation capabilities of fuzzy systems in stochastic environments are analyzed in this paper. By using ideas from sieve estimation, increasing sequences of fuzzy rule-based systems capable of consistently estimating arbitrary regression surfaces are constructed. Results include least squares learning of a mapping perturbed by additive random noise in a static-regression context. L1 (i.e., least absolute deviation) estimation is also studied, and the consistency of fuzzy rule-based sieve estimators for L1-optimal regression surfaces is shown, thus giving additional theoretical support to the robust filtering capabilities of fuzzy systems and their adequacy for modeling, prediction, and control of systems affected by impulsive noise.
机译:分析了随机环境中模糊系统的非参数估计能力。通过使用筛分估计的思想,构造了能够持续估计任意回归曲面的基于模糊规则的系统的增加序列。结果包括在静态回归上下文中最小二乘学习映射受附加随机噪声干扰的映射。还研究了L1(即最小绝对偏差)估计,并显示了基于L1最优回归曲面的基于模糊规则的筛估计的一致性,从而为模糊系统的鲁棒滤波功能及其建模的充分性提供了额外的理论支持。 ,预测和控制受脉冲噪声影响的系统。

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