基于局部特征选择分类器的人工免疫系统垃圾邮件过滤

Mayank Kalbhor, S. Shrivastava, Babita Ujjainiya
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引用次数: 3

摘要

考虑了基于局部集中的特征提取方法,通过将消息的每个区域转换为相应的LC特征,可以非常有效地从消息中提取位置相关信息。为了将LC方法应用到垃圾邮件过滤的整个过程中,设计了一个LC模型,该模型首先使用术语选择策略和定义好的趋势阈值生成两种检测集,然后使用窗口将消息划分为局部区域。在对特定信息进行分割后,计算检测器的浓度,并将其作为每个局部区域的特征。最后,将所有局部特征区域进行组合,生成特征向量。然后对可用的特征向量应用免疫系统启发的适当分类方法。为了检验模型的性能,采用交叉验证方法在四个基准语料库上进行了实验。结果表明,该模型以信息增益作为词项选择方法,基于LC的特征提取方法在实际应用中具有灵活的适用性。与其他基于全局集中的特征提取技术(如词袋)相比,LC方法在精度和度量方面都具有更好的性能。实验还表明,基于人工免疫系统的LC方法在所有参数下都有较好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An artificial immune system with local feature selection classifier for spam filtering
The Local Concentration based feature extraction approach is take into consideration to be able to very effectively extract position related information from messages by transforming every area of a message to a corresponding LC feature. To include the LC approach into the entire process of spam filtering, a LC model is designed, where two kinds of detector sets are initially generated by using term selection strategies and a well-defined tendency threshold, then a window is applied to divide the message into local areas. After segmentation of the particular message, concentration of the detectors are calculated and brought as the feature for every local area. Finally, feature vector is created by combining all the local feature area. Then appropriate classification method inspired from immune system is applied on available feature vector. To check the performance of model, several experiments are conducted on four benchmark corpora using the cross-validation methodology. It is shown that our model performs well with the Information Gain as term selection methods, LC based feature extraction method with flexible applicability in the real world. In comparison of other global-concentration based feature extraction techniques like bag-of-word the LC approach has better performance in terms of both accuracy and measure. It is also demonstrated that the LC approach with artificial immune system inspired classifier gives better results against all parameters.
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