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Features Reweighting and Similarity Coefficient Based Method for Email Spam Filtering

机译:基于特征加权和相似系数的垃圾邮件过滤方法

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摘要

Spam is flooding the Internet with many copies of the same message, in an attempt to force the message on people who would not otherwise choose to receive it. Anti spam by determining whether or not an incoming email is spam has become an important problem. One of the main characters or the problem of Spam filtering is its high dimension of space feature. For this reason, we need a reducing stage of dimensions. This study tried to cover this side from spam detection techniques by study the effect of re-weight of features. The works started by applying similarity coefficient in the dataset and then re-weight the features in the dataset and applying similarity coefficient in the new data set. Finally make a Comparison between the result before and after re-weight and Comparison with feature selection method. The objective of this Thesis is: Study the similarity coefficient (Cosine and Dice) and Study the effects of the important feature to other features through the re-weight process. The most important results of this study are: Reweighting process did not improve the success rate of any of the two methods (Cosine and Dice). Also, Feature selection method led to improve detection in Cosine, while reweighting method not improve detection any of (Cosine or Dice).
机译:垃圾邮件将大量相同消息的副本淹没在Internet上,试图将消息强加给原本不会选择接收该消息的人。通过确定传入电子邮件是否为垃圾邮件来反垃圾邮件已成为一个重要问题。垃圾邮件过滤的主要特征之一就是其高维空间特征。因此,我们需要缩小尺寸。这项研究试图通过研究特征权重的影响来涵盖垃圾邮件检测技术的这一方面。该工作首先在数据集中应用相似系数,然后对数据集中的要素重新加权,然后在新数据集中应用相似系数。最后,进行权重前后的结果比较和特征选择方法的比较。本文的目的是:研究相似系数(余弦和骰子),并通过重加权过程研究重要特征对其他特征的影响。这项研究的最重要结果是:重加权过程并没有提高两种方法(余弦和骰子)中任何一种的成功率。而且,特征选择方法导致改进了余弦的检测,而重加权方法没有改进任何(余弦或骰子)的检测。

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