Abstract
Large neural language models trained on massive amounts of text have emerged
as a formidable strategy for Natural Language Understanding tasks. However, the
strength of these models as Natural Language Generators is less clear. Though
anecdotal evidence suggests that these models generate better quality text,
there has been no detailed study characterizing their generation abilities. In
this work, we compare the performance of an extensively pretrained model,
OpenAI GPT2-117 (Radford et al., 2019), to a state-of-the-art neural story
generation model (Fan et al., 2018). By evaluating the generated text across a
wide variety of automatic metrics, we characterize the ways in which pretrained
models do, and do not, make better storytellers. We find that although GPT2-117
conditions more strongly on context, is more sensitive to ordering of events,
and uses more unusual words, it is just as likely to produce repetitive and
under-diverse text when using likelihood-maximizing decoding algorithms.
Description
Do Massively Pretrained Language Models Make Better Storytellers?
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