Evaluation of Ensemble Learning Models for Hardware-Trojan Identification at Gate-level Netlists

Ryotaro Negishi, N. Togawa
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Abstract

IoT (Internet-of-Things) devices are tremendously widespread in our daily lives and these devices are very often outsourced to third-party companies to save cost. However, it is pointed out that the risk to insert malicious circuitry, called hardware Trojans (HTs), much increases there. The methods using machine learning for detecting HTs at gate-level netlists have been proposed, and those based on ensemble learning models are considered the most effective among them. This paper evaluates the performance of HT detection at gate-level netlists using various machine learning models based on ensemble learning, including random forest, XGBoost, LightGBM, and CatBoost. In particular, we optimize HT features for each machine-learning model and perform HT detection for various gate-level netlists, including intellectual property core netlists. The detailed HT detection results are thoroughly summarized and compared.
评估用于在门级网表中识别硬件木马的集合学习模型
物联网(Internet-of-Things)设备在我们的日常生活中非常普遍,为了节约成本,这些设备往往被外包给第三方公司。然而,有人指出,在这些设备中插入被称为硬件木马(HT)的恶意电路的风险大大增加。利用机器学习检测门级网表中 HT 的方法已被提出,其中基于集合学习模型的方法被认为是最有效的。本文评估了使用各种基于集合学习的机器学习模型(包括随机森林、XGBoost、LightGBM 和 CatBoost)检测门级网表中 HT 的性能。特别是,我们为每个机器学习模型优化了 HT 特征,并对各种门级网表(包括知识产权核心网表)进行了 HT 检测。我们对详细的 HT 检测结果进行了全面总结和比较。
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