SOTAVerified

Text Style Transfer

Text Style Transfer is the task of controlling certain attributes of generated text. The state-of-the-art methods can be categorized into two main types which are used on parallel and non-parallel data. Methods on parallel data are typically supervised methods that use a neural sequence-to-sequence model with the encoder-decoder architecture. Methods on non-parallel data are usually unsupervised approaches using Disentanglement, Prototype Editing and Pseudo-Parallel Corpus Construction.

The popular benchmark for this task is the Yelp Review Dataset. Models are typically evaluated with the metrics of Sentiment Accuracy, BLEU, and PPL.

Papers

Showing 110 of 186 papers

TitleStatusHype
Implementing Long Text Style Transfer with LLMs through Dual-Layered Sentence and Paragraph Structure Extraction and Mapping0
Evaluating Text Style Transfer Evaluation: Are There Any Reliable Metrics?0
Predicting Compact Phrasal Rewrites with Large Language Models for ASR Post Editing0
Multi-Attribute Constraint Satisfaction via Language Model Rewriting0
Multilingual and Explainable Text Detoxification with Parallel CorporaCode0
Style-Specific Neurons for Steering LLMs in Text Style TransferCode1
WAS: Dataset and Methods for Artistic Text SegmentationCode1
A Survey of Text Style Transfer: Applications and Ethical Implications0
SETTP: Style Extraction and Tunable Inference via Dual-level Transferable Prompt Learning0
Hard Prompts Made Interpretable: Sparse Entropy Regularization for Prompt Tuning with RLCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1SentiIncG-Score (BLEU, Accuracy)59.17Unverified
2StyleEmbBLEU30Unverified