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Data preprocessing methods for Sparse Auto-encoder based fuzzy rule classifier

机译:基于稀疏自动编码器的模糊规则分类器的数据预处理方法

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Sparse Auto-encoders (SA) have lately become very popular for their ability to represent data in a compact form. Due to this property, SAs have been earlier used for fuzzy rule reduction in control, regression and classification problems. The learning capability of SAs depend on the quality of input data, and most often some kind of pre-processing may become a mandatory requisite for learning. This paper proposes data preprocessing methods to improve the performance of SAs during fuzzy rule reduction. The proposed approach enables the SA based fuzzy rule classifier to work on both real, as well as categorical attribute type data sets, and also with improved performance. Proposed methods were tested and compared w.r.t. performance and rule size over 7 data sets. The experimentation provided satisfactory results, and in some cases the proposed model gave improvements in classification accuracy by upto 3 percent and reduction in rule base by over 40 times, as compared to traditional fuzzy rule classifiers.
机译:稀疏自动编码器(SA)最近以其以紧凑形式表示数据的能力而变得非常流行。由于这种特性,安全联盟早已用于控制,回归和分类问题中的模糊规则减少。 SA的学习能力取决于输入数据的质量,大多数情况下,某种预处理可能成为学习的必备条件。本文提出了数据预处理方法,以提高模糊规则约简过程中SA的性能。所提出的方法使基于SA的模糊规则分类器既可以在实际属性中也可以在分类属性类型数据集上工作,并且具有改进的性能。建议的方法进行了测试和比较性能和规则大小超过7个数据集。实验提供了令人满意的结果,与传统的模糊规则分类器相比,该模型在分类准确率方面提高了3%,规则库减少了40倍以上。

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