嵌入结构化字典条目

Steven R. Wilson, Walid Magdy, Barbara McGillivray, Gareth Tyson
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引用次数: 2

摘要

以前的工作已经展示了如何有效地利用外部资源(如字典)来提高英语单词嵌入,或者通过操纵训练过程,或者通过对嵌入空间进行事后调整。我们尝试了一种多任务学习方法,用于在学习字典关键词嵌入时显式地合并字典条目的结构化元素,例如用户分配的标签和用法示例。我们的工作概括了几种现有的从字典中学习词嵌入的模型。然而,我们发现最有效的表示总体上是通过简单地用跳跃图目标训练字典中所有条目的连接文本来学习的,而不是特别关注条目的结构。
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Embedding Structured Dictionary Entries
Previous work has shown how to effectively use external resources such as dictionaries to improve English-language word embeddings, either by manipulating the training process or by applying post-hoc adjustments to the embedding space. We experiment with a multi-task learning approach for explicitly incorporating the structured elements of dictionary entries, such as user-assigned tags and usage examples, when learning embeddings for dictionary headwords. Our work generalizes several existing models for learning word embeddings from dictionaries. However, we find that the most effective representations overall are learned by simply training with a skip-gram objective over the concatenated text of all entries in the dictionary, giving no particular focus to the structure of the entries.
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