Scalable syntactic inductive biases for neural language models
<p>Natural language has a sequential surface form, although its underlying structure has been argued to be hierarchical and tree-structured in nature, whereby smaller linguistic units like words are recursively composed to form larger ones, such as phrases and sentences. This thesis aims to an...
第一著者: | Kuncoro, AS |
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その他の著者: | Blunsom, P |
フォーマット: | 学位論文 |
言語: | English |
出版事項: |
2022
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主題: |
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