Generation of Chinese classical poetry based on pre-trained model
- URL: http://arxiv.org/abs/2211.02541v1
- Date: Fri, 4 Nov 2022 16:05:31 GMT
- Title: Generation of Chinese classical poetry based on pre-trained model
- Authors: Ziyao Wang, Lujin Guan, Guanyu Liu
- Abstract summary: This paper mainly tries to use BART and other pre training models to generate metrical poetry text.
It developed a set of AI poetry Turing problems, it was reviewed by a group of poets and poetry writing researchers.
The model of poetry generation studied by the author generalizes works that cannot be distinguished from those of advanced scholars.
- Score: 1.6114012813668934
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In order to test whether artificial intelligence can create qualified
classical poetry like humans, the author proposes a study of Chinese classical
poetry generation based on a pre-trained model. This paper mainly tries to use
BART and other pre training models, proposes FS2TEXT and RR2TEXT to generate
metrical poetry text and even specific style poetry text, and solves the
problem that the user's writing intention gradually reduces the relevance of
the generated poetry text.
In order to test the model's results, the authors selected ancient poets, by
combining it with BART's poetic model work, developed a set of AI poetry Turing
problems, it was reviewed by a group of poets and poetry writing researchers.
There were more than 600 participants, and the final results showed that,
high-level poetry lovers can't distinguish between AI activity and human
activity, this indicates that the author's working methods are not
significantly different from human activities. The model of poetry generation
studied by the author generalizes works that cannot be distinguished from those
of advanced scholars.
The number of modern Chinese poets has reached 5 million. However, many
modern Chinese poets lack language ability and skills as a result of their
childhood learning. However, many modern poets have no creative inspiration,
and the author's model can help them. They can look at this model when they
choose words and phrases and they can write works based on the poems they
already have, and they can write their own poems. The importance of poetry lies
in the author's thoughts and reflections. It doesn't matter how good AI poetry
is. The only thing that matters is for people to see and inspire them.
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