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Improving Malware Detection Accuracy by Extracting Icon Information

机译:通过提取图标信息来提高恶意软件检测的准确性

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Detecting PE malware files is now commonly approached using statistical and machine learning models. While these models commonly use features extracted from the structure of PE files, we propose that icons from these files can also help better predict malware. We propose a new machine learning approach to extract information from icons. Our proposed approach consists of two steps: 1) extracting icon features using summary statics, a histogram of gradients (HOG), and a convolutional autoencoder, 2) clustering icons based on the extracted icon features. Using publicly available data and by using machine learning experiments, we show our proposed icon clusters significantly boost the efficacy of malware prediction models. In particular, our experiments show an average accuracy increase of 10 percent when icon clusters are used in the prediction model.
机译:现在通常使用统计和机器学习模型来检测PE恶意软件文件。虽然这些模型通常使用从PE文件结构中提取的功能,但我们建议这些文件中的图标还可以帮助更好地预测恶意软件。我们提出了一种新的机器学习方法来从图标中提取信息。我们提出的方法包括两个步骤:1)使用摘要静态信息,梯度直方图(HOG)和卷积自动编码器提取图标特征; 2)基于提取的图标特征对图标进行聚类。使用公开可用的数据并通过机器学习实验,我们证明了我们提出的图标群集可显着提高恶意软件预测模型的功效。特别是,我们的实验表明,在预测模型中使用图标群集时,平均准确度提高了10%。

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