首页> 外国专利> INNOCENT UNTIL PROVEN GUILTY (IUPG): ADVERSARY RESISTANT AND FALSE POSITIVE RESISTANT DEEP LEARNING MODELS

INNOCENT UNTIL PROVEN GUILTY (IUPG): ADVERSARY RESISTANT AND FALSE POSITIVE RESISTANT DEEP LEARNING MODELS

机译:无辜,直到被证明有罪(IUPG):对手抗性和假冒积极的深度学习模型

摘要

Techniques for providing innocent until proven guilty (IUPG) solutions for building and using adversary resistant and false positive resistant deep learning models are disclosed. In some embodiments, a system, process, and/or computer program product includes storing a set comprising one or more innocent until proven guilty (IUPG) models for static analysis of a sample; performing a static analysis of content associated with the sample, wherein performing the static analysis includes using at least one stored IUPG model; and determining that the sample is malicious based at least in part on the static analysis of the content associated with the sample, and in response to determining that the sample is malicious, performing an action based on a security policy.
机译:公开了用于提供无辜的技术,直到经过验证的建筑物和使用抗逆性和假抗性深度学习模型的制造和使用抗逆性和假抗性深度学习模型。 在一些实施例中,系统,处理和/或计算机程序产品包括存储包括一个或多个无序的集合,直到被证明的罪(IUPG)模型用于样品的静态分析; 执行与样本相关联的内容的静态分析,其中执行静态分析包括使用至少一个存储的IUPG模型; 并确定样本是恶意的至少部分地基于与样本相关联的内容的静态分析,并且响应于确定样本是恶意的,基于安全策略执行动作。

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