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The WM Method Completed: A Flexible Fuzzy System Approach to Data Mining

机译:WM方法完成:一种灵活的模糊系统数据挖掘方法

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In this paper, the so-called Wang-Mendel (WM) method for generating fuzzy rules from data is enhanced to make it a comprehensive and flexible fuzzy system approach to data description and prediction. In the description part, the core ideas of the WM method are used to develop three methods to extract fuzzy IF-THEN rules from data. The first method shows how to extract rules for the user-specifed cases, the second method generates all the rules that can be generated directly from the data, and the third method extrapolates the rules generated by the second method over the entire domain of interest. In the prediction part, two fuzzy predictive models are constructed based on the fuzzy IF-THEN rules extracted by the methods of the description part. The first model gives a continuous output and is suitable for predicting continuous variables, and the second model gives a piecewise constant output and is suitable for predicting categorical variables. We show that by comparing the prediction accuracy of the fuzzy predictive models with different numbers of fuzzy sets covering the input variables, we can rank the importance of the input variables. We also propose an algorithm to optimalize the fuzzy predictive models, and show how to use the models to solve pattern recognition problems. Throughout this paper, we use a set of real data from a steel rolling plant to demonstrate the ideas and test the models. The core codes of the WM method are included in the Appendix.
机译:在本文中,增强了从数据生成模糊规则的所谓的Wang-Mendel(WM)方法,使其成为一种用于数据描述和预测的全面而灵活的模糊系统方法。在描述部分中,WM方法的核心思想用于开发三种从数据中提取模糊IF-THEN规则的方法。第一种方法显示了如何为用户指定的案例提取规则,第二种方法生成了可以直接从数据生成的所有规则,而第三种方法则将第二种方法生成的规则外推到整个感兴趣的领域。在预测部分,基于描述部分方法提取的模糊IF-THEN规则,构建了两个模糊预测模型。第一个模型提供连续输出,适合于预测连续变量,第二个模型提供分段恒定输出,并且适合于预测类别变量。我们表明,通过将模糊预测模型的预测精度与覆盖输入变量的不同数量的模糊集进行比较,可以对输入变量的重要性进行排名。我们还提出了一种优化模糊预测模型的算法,并展示了如何使用这些模型来解决模式识别问题。在整个本文中,我们使用轧钢厂的一组真实数据来演示这些思想并测试模型。 WM方法的核心代码包含在附录中。

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