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Feature extraction from design documents to enable rule learning for improving assertion coverage

机译:从设计文档中提取特征以启用规则学习以改善断言覆盖率

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Feature selection is essential to rule learning in the context of functional verification. In practice today, features are selected manually and the selection requires domain knowledge. In contrast, this work proposes using automatic feature extraction from design documents as a viable approach to support rule learning. To demonstrate its effectiveness, document-extracted features are employed to learn the rules for covering a set of assertions based on a commercial SoC. Experiments show that 100%-accurate rules can be obtained for more than 70% of the assertions.
机译:功能选择对于功能验证上下文中的规则学习至关重要。在当今的实践中,特征是手动选择的,选择需要领域知识。相反,这项工作建议使用从设计文档中自动提取特征作为支持规则学习的可行方法。为了证明其有效性,采用了文档提取功能来学习用于覆盖基于商业SoC的一组断言的规则。实验表明,对于超过70%的断言,可以获得100%准确的规则。

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