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Rethinking Sparsity in Performance Modeling for Analog and Mixed Circuits using Spike and Slab Models

机译:使用尖峰和板式模型对模拟和混合电路性能建模的重新思考稀疏性

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As integrated circuit technologies continue to scale, efficient performance modeling becomes indispensable. Recently, several new learning paradigms have been proposed to reduce the computational cost associated with accurate performance modeling. A common attribute among most of these paradigms is the leverage of the sparsity feature to build efficient performance models. In this work, we propose a new perspective to incorporate sparsity in the modeling task by utilizing spike and slab feature selection techniques. Practically, our proposed method uses two different priors on the different model coefficients based on their importance. This is incorporated into a mixture model that can be built using a hierarchical Bayesian framework to select the important features and find the model coefficients. Our numerical experiments demonstrate that the proposed approach can achieve better results compared to traditional sparse modeling techniques while also providing valuable insight about the important features in the model.
机译:由于集成电路技术继续规模,有效的性能建模变得不可或缺。最近,已经提出了几种新的学习范例来降低与准确性能建模相关的计算成本。这些范式中大多数的共同属性是杠杆性功能的杠杆,以建立高效的性能模型。在这项工作中,我们提出了一种新的视角,通过利用Spike和Slab特征选择技术来纳入建模任务中的稀疏性。实际上,我们提出的方法基于它们的重要性,在不同的模型系数上使用两个不同的前瞻。这被纳入混合模型,可以使用分层贝叶斯框架构建,以选择重要的功能并找到模型系数。我们的数值实验表明,与传统的稀疏建模技术相比,所提出的方法可以实现更好的结果,同时还提供有价值的洞察模型中的重要特征。

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