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Identifying Image Spam based on Header and File Properties using C4.5 Decision Trees and Support Vector Machine Learning

机译:使用C4.5决策树和支持向量机学习基于标题和文件属性识别图像垃圾邮件

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Image spam poses a great threat to email communications due to high volumes, bigger bandwidth requirements, and higher processing requirements for filtering. We present a feature extraction and classification framework that operates on features that can be extracted from image files in a very fast fashion. The features considered are thoroughly analyzed regarding their information gain. We present classification performance results for C4.5 decision tree and support vector machine classifiers. Lastly, we compare the performance that can be achieved using these fast features to a more complex image classifier operating on morphological features extracted from fully decoded images. The proposed classifier is able to detect a large amount of malicious images while being computationally inexpensive.
机译:由于数量大,带宽需求大和过滤处理要求高,图像垃圾邮件对电子邮件通信构成了极大的威胁。我们提出了一种特征提取和分类框架,该框架对可以以非常快的方式从图像文件中提取的特征进行操作。对所考虑的功能进行了全面的信息获取分析。我们提出了C4.5决策树和支持向量机分类器的分类性能结果。最后,我们将使用这些快速功能可以实现的性能与更复杂的图像分类器进行比较,该分类器对从完全解码的图像中提取的形态特征进行操作。所提出的分类器能够检测大量恶意图像,同时在计算上不昂贵。

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