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Deep-n-Cheap An Automated Search Framework for Low Complexity Deep Learning

机译:深度N-廉价的自动搜索框架,用于低复杂性深度学习

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We present Deep-n-Cheap – an open-source AutoML framework to search for deep learning models. This search includes both architecture and training hyperparameters, and supports convolutional neural networks and multilayer perceptrons. Our framework is targeted for deployment on both benchmark and custom datasets, and as a result, offers a greater degree of search space customizability as compared to a more limited search over only pre-existing models from literature. We also introduce the technique of ’search transfer’, which demonstrates the generalization capabilities of our models to multiple datasets. Deep-n-Cheap includes a user-customizable complexity penalty which trades off performance with training time or number of parameters. Specifically, our framework results in models offering performance comparable to state-of-the-art while taking 1-2 orders of magnitude less time to train than models from other AutoML and model search frameworks. Additionally, this work investigates and develops various insights regarding the search process. In particular, we show the superiority of a greedy strategy and justify our choice of Bayesian optimization as the primary search methodology over random / grid search.
机译:我们提供深度低价 - 一个开源自动机框架,用于搜索深度学习模型。此搜索包括架构和培训高参数,并支持卷积神经网络和多层的感知者。我们的框架是针对基准和自定义数据集的部署,因此,与仅限于文献预先存在的模型的更有限的搜索相比,可以提供更大程度的搜索空间定制。我们还介绍了“搜索传输”的技术,它展示了我们模型到多个数据集的泛化能力。 Deep-N便宜包括用户可定制的复杂性惩罚,其使用培训时间或参数数进行性能。具体而言,我们的框架导致提供与最先进的性能相当的模型,同时比来自其他Automl和模型搜索框架的模型更少的时间乘坐1-2级数量级。此外,这项工作调查并开发了关于搜索过程的各种见解。特别是,我们展示了贪婪战略的优越性,并证明了我们选择贝叶斯优化的选择,作为随机/网格搜索的主要搜索方法。

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