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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Auto-Pytorch: Multi-Fidelity MetaLearning for Efficient and Robust AutoDL
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Auto-Pytorch: Multi-Fidelity MetaLearning for Efficient and Robust AutoDL

机译:Auto-Pytorch:用于高效和鲁棒Autodl的多保真真金

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摘要

While early AutoML frameworks focused on optimizing traditional ML pipelines and their hyperparameters, a recent trend in AutoML is to focus on neural architecture search. In this paper, we introduce Auto-PyTorch, which brings together the best of these two worlds by jointly and robustly optimizing the network architecture and the training hyperparameters to enable fully automated deep learning (AutoDL). Auto-PyTorch achieves state-of-the-art performance on several tabular benchmarks by combining multi-fidelity optimization with portfolio construction for warmstarting and ensembling of deep neural networks (DNNs) and common baselines for tabular data. To thoroughly study our assumptions on how to design such an AutoDL system, we additionally introduce a new benchmark on learning curves for DNNs, dubbed LCBench, and run extensive ablation studies of the full Auto-PyTorch on typical AutoML benchmarks, eventually showing that Auto-PyTorch performs better than several state-of-the-art competitors.
机译:虽然早期的自动框架集中在优化传统的ML管道及其普遍的公路上,但最近的Automl趋势是专注于神经结构搜索。在本文中,我们介绍了自动Pytorch,它通过联合和强大地优化网络架构和培训QuantParameters来实现这两个世界的最佳汇集,以实现全自动深度学习(AutoDL)。 Auto-Pytorch通过将多保真优化与产品组合构造相结合,实现了多种表格基准的最先进的性能,以便为深度神经网络(DNNS)和用于表格数据的常见基线进行加剧和集合。要彻底研究我们对如何设计这种AutoDL系统的假设,我们还在为DNN,被称为LCBench的学习曲线引入了一个新的基准,并在典型的自动轨基准上运行了全自动 - Pytorch的广泛消融研究,最终显示了自动 - Pytorch表现优于几个最先进的竞争对手。

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