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Rule Weight Optimization and Feature Selection in Fuzzy Systems with Sparsity Constraints

机译:具有稀疏系统的模糊系统规则权重优化和特征选择

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In this paper, we are dealing with a novel data-driven learning method (SparseFIS) for Takagi-Sugeno fuzzy systems, extended by including rule weights. Our learning method consists of three phases: the first phase conducts a clustering process in the input/ output feature space with iterative vector quantization. Hereby, the number of clusters = rules is pre-defined and denotes a kind of upper bound on a reasonable granularity. The second phase optimize the rule weights in the fuzzy systems with respect to least squares error measure by applying a sparsity-constrained steepest descent optimization procedure. This is done in a coherent optimization procedure together with elicitation of consequent parameters. Depending on the sparsity threshold, more or less rules weights can be forced towards 0, switching off some rules. In this sense, a rule selection is achieved. The third phase estimates the linear consequent parameters by a regularized sparsity constrained optimization procedure for each rule separately (local learning approach). Sparsity constraints are applied here in order to force linear parameters to be 0, triggering a feature selection mechanism per rule. In some cases, this may also yield a global feature selection, whenever the linear parameters of some features in each rule are near 0. The method is evaluated based on high-dimensional data from industrial processes and based on benchmark data sets from the internet and compared to well-known batch training methods in terms of accuracy and complexity of the fuzzy systems.
机译:在本文中,我们正在处理Takagi-Sugeno模糊系统的新型数据驱动学习方法(SparseFIS),包括规则权重。我们的学习方法由三个阶段组成:第一阶段在输入/输出特征空间中进行迭代矢量量化在输入/输出特征空间中进行聚类过程。因此,群集的数量=规则是预先定义的,并且表示合理粒度的一种上限。通过应用稀疏性约束的速度下降优化过程,第二相对于最小二乘误差测量来优化模糊系统中的规则权重。这是在连贯的优化过程中完成的,以及随后的参数阐述。根据稀疏性阈值,可以强制更换或更少的规则权重,从而关闭一些规则。从这个意义上讲,实现了规则选择。第三阶段通过单独(本地学习方法)的正则化稀疏性约束优化过程来估计线性的随之而来的参数。此处应用稀疏性约束,以强制线性参数为0,触发每个规则的特征选择机制。在某些情况下,每当每个规则中的某些特征的线性参数近时,这也可能产生全局特征选择。该方法是基于来自工业过程的高维数据来评估的方法,并基于来自因特网的基准数据集和基于基准数据集。与众所周知的批量培训方法相比,在模糊系统的准确性和复杂性方面。

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