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Fuzzy Granular Classifier Approach for Spam Detection

机译:垃圾邮件检测的模糊粒度分类器方法

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Spam email problem is a major shortcoming of email technology for computer security. In this research, a granular classifier model is proposed to discover hyperboxes in the geometry of information granules for spam detection in three steps. In the first step, the k-means clustering algorithm is applied to find the seed_points to build the granular structure of the spam and non-spam patterns. Moreover, applying the interval analysis through the high homogeneity of the patterns captures the key part of the spam and non-spam classifiers' structure. In the second step, PSO algorithm is hybridized with the k-means to optimize the formalized information granules' performance. The proposed model is evaluated based on the accuracy, misclassification and coverage criteria. Experimental results reveal that the performance of our proposed model is increased through applying Particle Swarm Optimization and fuzzy set.
机译:垃圾电子邮件问题是电子邮件技术对计算机安全性的主要缺陷。在这项研究中,提出了一种颗粒分类器模型,该模型通过三个步骤来发现用于检测垃圾邮件的信息颗粒几何形状中的超框。第一步,应用k均值聚类算法来找到seed_points,以构建垃圾邮件和非垃圾邮件模式的粒度结构。此外,通过模式的高度同质性应用间隔分析可以捕获垃圾邮件和非垃圾邮件分类器结构的关键部分。第二步,将PSO算法与k均值混合,以优化形式化信息颗粒的性能。基于准确性,分类错误和覆盖标准对所提出的模型进行评估。实验结果表明,通过应用粒子群优化和模糊集可以提高我们提出的模型的性能。

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