Differentiable Architecture Search (DARTS) is a recent neural architecture search (NAS) method based on a differentiable relaxation. Due to its success, numerous variants analyzing and improving parts of the DARTS framework have recently been proposed. By considering the problem as a constrained bilevel optimization, we present and analyze DARTS-PRIME, a variant including improvements to architectural weight update scheduling and regularization towards discretization. We propose a dynamic schedule based on per-minibatch network information to make architecture updates more informed, as well as proximity regularization to promote well-separated discretization. Our results in multiple domains show that DARTS-PRIME improves both performance and reliability, comparable to state-of-the-art in differentiable NAS.
翻译:差异式建筑搜索(DARTS)是一种基于不同放松的近期神经结构搜索(NAS)方法。 由于其成功,最近提出了许多分析和改进DARSS框架部分内容的变体。 通过将这一问题视为一个有限的双级优化,我们提出和分析DARSS-PRIME,这是一个包括改进建筑重量更新时间安排和向离散方向调整的变体。我们提议了一个动态时间表,以每个微型网信息为基础,使结构更新更加知情,并实现近距离整齐化,以促进分离。 我们在多个领域的结果表明,DARSS-PRIME提高了性能和可靠性,可与不同的NAS中最先进的相比。