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Artificial neural network for decision of software maliciousness

机译:人工神经网络用于软件恶意性判定

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With the rapidly development of virus technology, the number of malicious code has continued to increase. So it is imperative to optimize the traditional manual analysis method by automatic maliciousness decision system. Motivated by the inference technique for detecting viruses, and a recent successful classification method, we explore Radux-an automatic software maliciousness decision system. It rests on artificial neural network based on behavior hidden in malicious code. Decompile technique is applied to characterize behavioral and structural properties of binary code, which creates more abstract descriptions of malware. Experiment shows that this system can decision software maliciousness efficiently.
机译:随着病毒技术的飞速发展,恶意代码的数量持续增加。因此,必须通过自动恶意判定系统来优化传统的人工分析方法。受用于检测病毒的推理技术和最近成功的分类方法的启发,我们探索了Radux-一种自动软件恶意性判定系统。它基于恶意代码中隐藏的行为的人工神经网络。反编译技术用于表征二进制代码的行为和结构属性,从而创建了更抽象的恶意软件描述。实验表明,该系统可以有效地判断软件恶意软件。

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