Simple and Effective Multi-Token Completion from Masked Language Models
Oren Kalinsky,
Guy Kushilevitz,
Alexander Libov
et al.
Abstract:Pre-trained neural masked language models are often used for predicting a replacement token for a given sequence position, in a cloze-like task. However, this usage is restricted to predicting a single token, from a relatively small pre-trained vocabulary. Recent Sequence2Sequence pre-trained LMs like T5 do allow predicting multi-token completions, but are more expensive to train and run. We show that pre-trained masked language models can be adapted to produce multi-token completions, with only a modest addit… Show more
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