基于人工智能的恶意软件检测与分类研究

Li-Chin Huang, Chun-Hsien Chang, M. Hwang
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引用次数: 1

摘要

恶意软件仍然是网络安全的主要威胁之一。随着网络设备类型的增加,除了攻击计算机之外,影响手机和物联网设备的恶意软件数量也显著增加。恶意软件可以改变受害者机器的正常操作,破坏用户文件,窃取用户的私人信息,窃取用户权限,并在设备上执行未经授权的活动。对于用户来说,除了使用设备带来的不便之外,还会对财产和信息造成威胁。因此,在面对恶意软件威胁时,如果能够准确、快速地检测到其存在并进行处理,有助于减少恶意软件的影响。为了提高恶意软件检测的准确性和效率,本文将利用人工智能领域的深度学习技术来研究和实现高精度的分类模型,以提高恶意软件检测的有效性。我们将使用卷积神经网络和长短期记忆作为主要的训练模型。当使用卷积神经网络进行训练时,我们使用恶意软件可视化技术。通过将恶意软件特征转换成图像进行输入,调整输入特征和输入方法,找到分类精度更高的模型;在长时记忆和短时记忆模型中,采用合适的特征和预处理方法寻找分类精度较高的模型。最后,通过对网络输出样本生成特征来优化小样本训练的准确性。在上述培训中,我们所有人都希望使用恶意软件作为影响不同设备的样本。在本文中,我们提出了三个研究课题:1)在导入图像时,使用高精度模型研究恶意软件。2).当导入非图像时,将使用高精度模型来研究恶意软件。3)利用该模型对生成的对抗网络进行小样本恶意软件检测优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Malware Detection and Classification Based on Artificial Intelligence
Malware remains one of the major threats to network security. As the types of network devices increase, in addition to attacking computers, the amount of malware that affects mobile phones and the Internet of Things devices has also significantly increased. Malicious software can alter the regular operation of the victim's machine, damage user files, steal private information from the user,steal user permissions, and perform unauthorized activities on the device. For users, in addition to the inconvenience caused by using the device, it also poses a threat to property and information. Therefore, in the face of malware threats, if it can accurately and quickly detect its presence and deal with it, it can help reduce the impact of malware. To improve the accuracy and efficiency of malware detection, this article will use deep learning technology in the field of artificial intelligence to study and implement high-precision classification models to improve the effectiveness of malware detection. We will use convolutional neural networks and long and short-term memory as the primary training model. When using convolutional neural networks for training, we use malware visualization techniques. By converting malware features into images for input, and adjusting the input features and input methods, models with higher classification accuracy will be found; in long-term and short-term memory models, appropriate features and preprocessing methods are used to find Model with high classification accuracy. Finally, the accuracy of small sample training is optimized by generating features for network output samples. In the above training, all of us want to use malware as a sample that affects different devices. In this article, we propose three research topics: 1). When importing images, high-precision models are used to study malware. 2). When importing non-images, a high-precision model will be used to study the malware. 3). By using this model, the generated adversarial network is optimized for small sample malware detection.
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