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Hotspots for probabilistic model testing and cyber analysis

机译:概率模型测试和网络分析的热点

摘要

Techniques for identifying weaknesses in a probabilistic model such as an artificial neural network using an iterative process are disclosed. A seed file may be obtained and variant files generated therefrom. The variant files may be evaluated for their fitness, based upon the ability of the variant files to cause the probabilistic model to fail. The fittest variants, which may refer to those variants that are most successful in causing the model to fail, may be selected. From these selected variants, a next generation of variant files may be created. The next generation of variant files may be evaluated for their fitness. At each step of fitness evaluation or at the end of the iterative process, a map of the fittest variants may be generated to identify hotspots. These hotspots may reveal segments of code or a file that are problematic for the model, which can be used to improve the model.
机译:公开了用于使用迭代过程识别诸如人工神经网络之类的概率模型中的缺陷的技术。可以获得种子文件和由其生成的变体文件。可以基于变量文件使概率模型失败的能力来评估变量文件。可以选择最适合的变体,其可以参考最成功地导致模型失败的那些变体。从这些所选变体中,可以创建下一代变体文件。可以评估下一代变体文件以获得其健身。在健身评估的每个步骤或在迭代过程结束时,可以生成最适合变体的地图以识别热点。这些热点可以显示代码的段或文件对于模型是有问题的,可用于改善模型。

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