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arxiv:2206.11864

Romantic-Computing

Published on Jun 1, 2022
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Abstract

Various text generation models, including LSTM-based and transformer-based models, are compared for their ability to write poetry in an early English Romanticism style, with transformer models outperforming LSTMs and improving with larger parameter sizes.

In this paper we compare various text generation models' ability to write poetry in the style of early English Romanticism. These models include: Character-Level Recurrent Neural Networks with Long Short-Term Memory, Hugging Face's GPT-2, OpenAI's GPT-3, and EleutherAI's GPT-NEO. Quality was measured based syllable count and coherence with the automatic evaluation metric GRUEN. Character-Level Recurrent Neural Networks performed far worse compared to transformer models. And, as parameter-size increased, the quality of transformer models' poems improved. These models are typically not compared in a creative context, and we are happy to contribute.

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