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Symbolic adaptive neuro-fuzzy inference for data mining of heterogenous data

机译:用于异构数据挖掘的符号自适应神经模糊推理

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The application of neuro-fuzzy systems to domains involving prediction and classification of symbolic data requires a reconsideration and a careful definition of the concept of distance between patterns. Traditional distances are inadequate to provide information about the proximity between the symbolic patterns. This work proposes a new architecture of neurofuzzy systems, the Symbolic Adaptive Neuro Fuzzy Inference System (SANFIS) that utilizes effectively a statistically extracted distance measure. The learning approach is a hybrid one and consists of a sequence of steps some of which are essential and some are used in order to optimize further the performance. Initially, a Statistical Distance Metric space is computed from the information provided with the training set. The premise parameters are subsequently evaluated with a three-phase Instance Based Learning (IBL) scheme that estimates the input membership function centers and spreads and constructs the corresponding fuzzy rules. The first phase of this scheme explores heuristic approaches that can uncover information for the relative importance and the reliability of the examples. The second phase exploits this information and extracts an adequate subset of the training patterns for the construction of the fuzzy rules. The concept of fuzzy adaptive subsethood is used at the third phase, for the reduction of the number of the fuzzy sets used as input membership functions. The consequent parameters are estimated with an efficient linear least squares formulation. The obtained performances from the SANFIS trained with the hybrid learning methods are significantly better than the traditional nearest neighbour Instance Based Learning schemes and compares well with advanced neural designs. At the same time SANFIS provides an enhanced explanation ability with the construction of a few interpretable rules.
机译:将神经模糊系统应用于涉及符号数据的预测和分类的域时,需要重新考虑并仔细定义模式之间距离的概念。传统距离不足以提供有关符号图案之间接近程度的信息。这项工作提出了一种神经模糊系统的新体系结构,即符号自适应神经模糊推理系统(SANFIS),该体系有效地利用了统计提取的距离测度。学习方法是一种混合方法,由一系列步骤组成,其中一些步骤是必不可少的,某些步骤则用于进一步优化性能。最初,根据训练集提供的信息计算统计距离度量空间。前提参数随后使用三相基于实例的学习(IBL)方案进行评估,该方案估计输入隶属函数中心并扩展并构造相应的模糊规则。该方案的第一阶段探索了启发式方法,这些方法可以揭示示例的相对重要性和可靠性的信息。第二阶段利用此信息并提取训练模式的足够子集以构建模糊规则。在第三阶段使用模糊自适应子集的概念,以减少用作输入隶属函数的模糊集的数量。通过有效的线性最小二乘公式估算结果参数。通过混合学习方法训练的SANFIS获得的性能明显优于传统的基于最近邻实例的学习方案,并且与高级神经设计相比具有很好的性能。同时,SANFIS通过构建一些可解释的规则提供了增强的解释能力。

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