Style-Transfer-in-Text and awesome-text-style-transfer

These are ecosystem siblings—both are curated resource repositories that independently catalog papers, datasets, and implementations related to text style transfer, serving as complementary reference guides rather than competing tools or interdependent components.

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About Style-Transfer-in-Text

fuzhenxin/Style-Transfer-in-Text

Paper List for Style Transfer in Text

This is a curated collection of research papers focused on 'text style transfer', a field dedicated to automatically changing the style of written text while preserving its original meaning. It compiles academic articles covering various methods and datasets for this task, useful for researchers and practitioners in natural language processing. The papers included discuss approaches where text goes in and comes out with a modified style (e.g., formal to informal, positive to negative sentiment).

natural-language-processing text-generation computational-linguistics text-rewriting AI-research

About awesome-text-style-transfer

yd1996/awesome-text-style-transfer

A list of resources about Text Style Transfer

This is a curated collection of academic papers, code, and presentations focused on Text Style Transfer. It helps researchers and practitioners explore different methods for automatically changing the style of text, such as making a casual message more formal or altering the sentiment of a review, while keeping the original meaning intact. You'll find resources that take raw text as input and produce text with a desired new style. This project is for anyone interested in the technical advancements and implementation details of text style transfer.

natural-language-processing computational-linguistics machine-learning-research text-generation content-creation

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