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Impact of feature extraction to accuracy of machine learning based hot spot detection

机译:特征提取对基于机器学习热点检测的准确性的影响

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Machine learning based hot spot detection is an emerging area in verification of mask and layout design. In machine learning, feature extraction methods suitable for application domains are as important as learning and inference algorithm itself for detection accuracy. In this paper, several feature extraction methods were proposed and implemented, and compared using a standard bench mark dataset. Preferable characteristics for the good feature extraction will be discussed. Comparison studies indicated that combination of a good feature extraction method and a standard machine learning algorithm often gave excellent results compared with previously reported results.
机译:基于机器学习的热点检测是屏蔽和布局设计验证的新兴区域。在机器学习中,适用于应用域的特征提取方法与用于检测精度的学习和推理算法本身一样重要。在本文中,提出并实施了几种特征提取方法,并使用标准台式标记数据集进行了比较。将讨论良好特征提取的优选特性。比较研究表明,与先前报道的结果相比,良好的特征提取方法和标准机器学习算法的组合往往产生了出色的结果。

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