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Learning Architectures from an Extended Search Space for Language Modeling

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arxiv 2005.02593 v2 pith:ZEDLRYU6 submitted 2020-05-06 cs.LG cs.CLstat.ML

Learning Architectures from an Extended Search Space for Language Modeling

classification cs.LG cs.CLstat.ML
keywords searcharchitectureslearningsystemsarchitectureconllinter-cellintra-cell
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Neural architecture search (NAS) has advanced significantly in recent years but most NAS systems restrict search to learning architectures of a recurrent or convolutional cell. In this paper, we extend the search space of NAS. In particular, we present a general approach to learn both intra-cell and inter-cell architectures (call it ESS). For a better search result, we design a joint learning method to perform intra-cell and inter-cell NAS simultaneously. We implement our model in a differentiable architecture search system. For recurrent neural language modeling, it outperforms a strong baseline significantly on the PTB and WikiText data, with a new state-of-the-art on PTB. Moreover, the learned architectures show good transferability to other systems. E.g., they improve state-of-the-art systems on the CoNLL and WNUT named entity recognition (NER) tasks and CoNLL chunking task, indicating a promising line of research on large-scale pre-learned architectures.

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