Differentiable architecture search has gradually become the mainstream research topic in the field of Neural Architecture Search (NAS) for its high efficiency compared with the early NAS (EA-based, RL-based) methods. Recent differentiable NAS also aims at further improving the search performance and reducing the GPU-memory consumption. However, these methods are no longer naturally capable of tackling the non-differentiable objectives, e.g., energy, resource-constrained efficiency, and other metrics, let alone the multi-objective search demands. Researches in the multi-objective NAS field target this but requires vast computational resources cause of the sole optimization of each candidate architecture. In light of this discrepancy, we propose the TND-NAS, which is with the merits of the high efficiency in differentiable NAS framework and the compatibility among non-differentiable metrics in Multi-objective NAS. Under the differentiable NAS framework, with the continuous relaxation of the search space, TND-NAS has the architecture parameters ($\alpha$) been optimized in discrete space, while resorting to the progressive search space shrinking by $\alpha$. Our representative experiment takes two objectives (Parameters, Accuracy) as an example, we achieve a series of high-performance compact architectures on CIFAR10 (1.09M/3.3\%, 2.4M/2.95\%, 9.57M/2.54\%) and CIFAR100 (2.46M/18.3\%, 5.46/16.73\%, 12.88/15.20\%) datasets. Favorably, compared with other multi-objective NAS methods, TND-NAS is less time-consuming (1.3 GPU-days on NVIDIA 1080Ti, 1/6 of that in NSGA-Net), and can be conveniently adapted to real-world NAS scenarios (resource-constrained, platform-specialized).
翻译:与早期NAS(以EA为基础,以RL为基础)方法相比,不同建筑搜索逐渐成为神经结构搜索领域的主流研究课题。最近不同的NAS还旨在进一步提高搜索性能,减少GPU模量消耗量。然而,这些方法已不再自然能够解决非差异性目标,例如能源、资源限制效率和其他指标,更不用说多目标搜索需求。多目标NAS领域研究的目标是这个目标,但需要大量计算资源来优化每个候选结构的唯一优化。鉴于这一差异,我们提议TND-NAS,这是不同NAS框架高效率以及多目标NAS中非差异性指标之间的兼容性。在不同的NAS框架下,搜索空间持续放松,TND-NAS(美元)在离散空间上优化了结构参数,但需要大量计算资源来优化每个候选人的结构结构。在使用不断进步的搜索性能模型时,在ARCS/2中(209-MA)中,在快速的A-RODRA(以我们不断增长的S)中,在快速搜索空间结构上要达到一个高标准。