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Towards modular and programmable architecture search

机译:朝向模块化和可编程架构搜索

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Neural architecture search methods are able to find high performance deep learning architectures with minimal effort from an expert [1]. However, current systems focus on specific use-cases (e.g. convolutional image classifiers and recurrent language models), making them unsuitable for general use-cases that an expert might wish to write. Hyperparameter optimization systems [2, 3, 4] are general-purpose but lack the constructs needed for easy application to architecture search. In this work, we propose a formal language for encoding search spaces over general computational graphs. The language constructs allow us to write modular, composable, and reusable search space encodings and to reason about search space design. We use our language to encode search spaces from the architecture search literature. The language allows us to decouple the implementations of the search space and the search algorithm, allowing us to expose search spaces to search algorithms through a consistent interface. Our experiments show the ease with which we can experiment with different combinations of search spaces and search algorithms without having to implement each combination from scratch. We release an implementation of our language with this paper.
机译:神经结构搜索方法能够找到高性能深度学习架构,专家的努力最小[1]。然而,当前系统专注于特定用例(例如卷积图像分类器和经常性语言模型),使其不适合专家可能希望写入的一般用例。 HyperParameter优化系统[2,3,4]是通用目的,但缺少容易应用于架构搜索所需的构造。在这项工作中,我们提出了一种用于通过一般计算图形编码搜索空间的正式语言。语言构造允许我们编写模块化,可协式和可重复使用的搜索空间编码并推理搜索空间设计。我们使用我们的语言从架构搜索文献中编码搜索空间。该语言允许我们解耦搜索空间和搜索算法的实现,允许我们将搜索空间暴露通过一致接口来搜索算法。我们的实验表明,我们可以在不必从头开始实施每个组合的搜索空间和搜索算法的不同组合来进行实验。我们通过本文发布了我们的语言的实施。

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