Augmenting Poetry Composition with Verse by Verse
- URL: http://arxiv.org/abs/2103.17205v1
- Date: Wed, 31 Mar 2021 16:31:57 GMT
- Title: Augmenting Poetry Composition with Verse by Verse
- Authors: David Uthus, Maria Voitovich, R.J. Mical
- Abstract summary: We have created a group of AI poets, styled after various American classic poets, that are able to offer as suggestions generated lines of verse while a user is composing a poem.
This includes a generative model, which is tasked with generating a large corpus of lines of verse offline and which are then stored in an index.
A dual-encoder model is tasked with recommending the next possible set of verses from our index given the previous line of verse.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We describe Verse by Verse, our experiment in augmenting the creative process
of writing poetry with an AI. We have created a group of AI poets, styled after
various American classic poets, that are able to offer as suggestions generated
lines of verse while a user is composing a poem. In this paper, we describe the
underlying system to offer these suggestions. This includes a generative model,
which is tasked with generating a large corpus of lines of verse offline and
which are then stored in an index, and a dual-encoder model that is tasked with
recommending the next possible set of verses from our index given the previous
line of verse.
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