有效的垃圾邮件过滤功能集

Reshma Varghese, K. Dhanya
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引用次数: 8

摘要

垃圾邮件是影响互联网服务质量的主要问题之一,特别是在电子邮件中。将电子邮件分类为垃圾邮件和火腿类别而没有任何错误分类是研究的相关领域。目标是找到过滤垃圾邮件的最佳特性集。为了开展这项工作,提取了四类特征。它们分别是词袋标签(BoW)、双词袋标签(BoW)、PoS标签和双词袋标签(Bigram PoS Tag)。基于朴素贝叶斯评分剔除稀有特征。我们选择信息增益作为特征选择技术,构造特征发生矩阵,该矩阵由词频-逆文档频率(TF-IDF)值加权。用奇异值分解作为矩阵分解技术。使用AdaBoostJ48、随机森林和称为顺序最小优化(SMO)的流行线性支持向量机(SVM)作为分类器进行模型生成。实验分别在单个特征模型和集成模型上进行。个体特征模型和集成模型的ROC均为1,FPR均为0。
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Efficient Feature Set for Spam Email Filtering
Spams are one of the major problems for the quality of Internet services, specially in the electronic mail. Classifying emails into spam and ham category without any misclassification is the concerned area of study. The objective is to find the best feature set for spam email filtering. For this work to be carried out, four categories of features are extracted. That are Bag-of-Word (BoW)s, Bigram Bag-of-Word (BoW)s, PoS Tag and Bigram PoS Tag. Rare features are eliminated based on Naive Bayes score. We chose Information Gain as feature selection technique and constructed Feature occurrence matrix, which is weighted by Term frequency-Inverse document frequency (TF-IDF) values. Singular Value Decomposition used as matrix factorization technique. AdaBoostJ48, Random Forest and Popular linear Support Vector Machine (SVM), called Sequential Minimal Optimization (SMO) are used as classifiers for model generation. The experiments are carried out on individual feature models as well as ensemble models. High ROC of 1 and low FPR of 0 were obtained for both individual feature model and ensemble model.
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