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 2650 of 186 papers

TitleStatusHype
Transductive Learning for Unsupervised Text Style TransferCode1
Style Transformer: Unpaired Text Style Transfer without Disentangled Latent RepresentationCode1
Multiple-Attribute Text Style TransferCode1
Multimodal Text Style Transfer for Outdoor Vision-and-Language NavigationCode1
Inducing Positive Perspectives with Text ReframingCode1
Learning to Model Editing ProcessesCode1
Rethinking Text Segmentation: A Novel Dataset and A Text-Specific Refinement ApproachCode1
Fine-grained Text Style Transfer with Diffusion-Based Language ModelsCode1
Style-Specific Neurons for Steering LLMs in Text Style TransferCode1
Civil Rephrases Of Toxic Texts With Self-Supervised TransformersCode1
How Positive Are You: Text Style Transfer using Adaptive Style EmbeddingCode1
Counterfactual Explanations for Survival Prediction of Cardiovascular ICU PatientsCode0
Are Large Language Models Actually Good at Text Style Transfer?Code0
Controllable Artistic Text Style Transfer via Shape-Matching GANCode0
Multilingual Text Style Transfer: Datasets & Models for Indian LanguagesCode0
Multidimensional Evaluation for Text Style Transfer Using ChatGPTCode0
Multilingual and Explainable Text Detoxification with Parallel CorporaCode0
Collaborative Learning of Bidirectional Decoders for Unsupervised Text Style TransferCode0
Learning to Select Bi-Aspect Information for Document-Scale Text Content ManipulationCode0
MSSRNet: Manipulating Sequential Style Representation for Unsupervised Text Style TransferCode0
Multilingual Pre-training with Language and Task Adaptation for Multilingual Text Style TransferCode0
Don’t Take It Literally: An Edit-Invariant Sequence Loss for Text GenerationCode0
Learning Evaluation Models from Large Language Models for Sequence GenerationCode0
Don't Take It Literally: An Edit-Invariant Sequence Loss for Text GenerationCode0
Don't lose the message while paraphrasing: A study on content preserving style transferCode0
Show:102550
← PrevPage 2 of 8Next →

Benchmark Results

#ModelMetricClaimedVerifiedStatus
1SAE+DiscriminatorG-Score (BLEU, Accuracy)74.56Unverified
2LatentOps (Few shot)G-Score (BLEU, Accuracy)71.6Unverified
3SentiIncG-Score (BLEU, Accuracy)66.25Unverified
4DeleteAndRetrieveG-Score (BLEU, Accuracy)54.64Unverified
5DeleteOnlyG-Score (BLEU, Accuracy)54.11Unverified
6MultiDecoderG-Score (BLEU, Accuracy)45.02Unverified
7CAEG-Score (BLEU, Accuracy)38.66Unverified
8StyleEmbeddingG-Score (BLEU, Accuracy)31.31Unverified
#ModelMetricClaimedVerifiedStatus
1SentiIncG-Score (BLEU, Accuracy)59.17Unverified
2StyleEmbBLEU30Unverified