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Pareto sampling: Choosing the right weights by derivative pursuit

机译:帕累托采样:通过求导选择正确的权重

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The convex weighted-sum method for multi-objective optimization has the desirable property of not worsening the difficulty of the optimization problem, but can lead to very nonuniform sampling. This paper explains the relationship between the weights and the partial derivatives of the tradeoff surface, and shows how to use it to choose the right weights and uniformly sample largely convex tradeoff surfaces. It proposes a novel method, Derivative Pursuit (DP), that iteratively refines a simplicial approximation of the tradeoff surface by using partial derivative information to guide the weights generation. We demonstrate the improvements offered by DP on both synthetic and circuit test cases, including a 22 nm SRAM bitcell design problem with strict read and write yield constraints, and power and performance objectives.
机译:用于多目标优化的凸加权和方法具有不降低优化问题难度的理想特性,但会导致采样非常不均匀。本文解释了权重与折衷曲面的偏导数之间的关系,并说明了如何使用它来选择正确的权重并均匀采样大面积凸出的折衷曲面。它提出了一种新颖的方法,导数追踪(DP),它通过使用偏导数信息来指导权重的生成来迭代地精简权衡曲面的简单逼近。我们演示了DP在综合和电路测试案例中所提供的改进,包括22 nm SRAM位单元设计问题,其中存在严格的读写良率约束以及功耗和性能指标。

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