New net models for spectral netlist partitioning

P. Rao, C.S. Jayathirtha, C.S. Raghavendraprasad
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Abstract

Spectral approaches for partitioning netlists that use the eigenvectors of a matrix derived from a weighted graph model of the netlist (hypergraph) have been attracting considerable attention. There are several known ways in which a weighted graph could be derived from the netlist. However, the effectiveness of these alternate net models for netlist partitioning has remained unexplored. In this paper we first evaluate the relative performance of these approaches and establish that the quality of the partition is sensitive to the choice of the model. We also propose and investigate a number of new approaches for deriving a weighted graph model for a netlist. We show through test results on benchmark partitioning problems that one of the new models proposed here, performs consistently better than all the other models.
谱网表划分的新网络模型
划分网表的谱方法使用从网表(超图)的加权图模型派生的矩阵的特征向量,已经引起了相当大的关注。有几种已知的方法可以从网表导出加权图。然而,这些用于网表划分的替代网络模型的有效性仍未得到探索。在本文中,我们首先评价了这些方法的相对性能,并建立了分区的质量对模型的选择是敏感的。我们还提出并研究了一些新的方法来推导网表的加权图模型。我们通过对基准划分问题的测试结果表明,这里提出的一个新模型的性能始终优于所有其他模型。
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