Controlling the style of natural language by disentangling the latent space is an important step towards interpretable machine learning. After the latent space is disentangled, the style of a sentence can be transformed by tuning the style representation without affecting other features of the sentence. Previous works usually use adversarial training to guarantee that disentangled vectors do not affect each other. However, adversarial methods are difficult to train. Especially when there are multiple features (e.g., sentiment, or tense, which we call style types in this paper), each feature requires a separate discriminator for extracting a disentangled style vector corresponding to that feature. In this paper, we propose a unified distr...
Text Style Transfer, the process of transforming text from one style to another, has gained signific...
Conventional machine learning approaches usually assume that the patterns follow the identical and i...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
In the natural language processing (NLP) research community, disentangled representation learning ha...
International audienceLearning disentangled representations of textual data is essential for many na...
The neural network has proven to be an effective machine learning method over the past decade, promp...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
International audienceTextual style transfer involves modifying the style of a text while preserving...
As the functionality of dialogue systems evolves, hybrid dialogue systems that accomplish user-speci...
The ability to transfer styles of texts or images, is an important measurement of the advancement of...
Recent studies show that auto-encoder based approaches successfully perform language generation, smo...
© 2017 Neural information processing systems foundation. All rights reserved. This paper focuses on ...
Self-supervised representation learning often uses data augmentations to induce some invariance to "...
Stylometry can be used to profile or deanonymize authors against their will based on writing style. ...
Controllable generative sequence models with the capability to extract and replicate the style of sp...
Text Style Transfer, the process of transforming text from one style to another, has gained signific...
Conventional machine learning approaches usually assume that the patterns follow the identical and i...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
In the natural language processing (NLP) research community, disentangled representation learning ha...
International audienceLearning disentangled representations of textual data is essential for many na...
The neural network has proven to be an effective machine learning method over the past decade, promp...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
International audienceTextual style transfer involves modifying the style of a text while preserving...
As the functionality of dialogue systems evolves, hybrid dialogue systems that accomplish user-speci...
The ability to transfer styles of texts or images, is an important measurement of the advancement of...
Recent studies show that auto-encoder based approaches successfully perform language generation, smo...
© 2017 Neural information processing systems foundation. All rights reserved. This paper focuses on ...
Self-supervised representation learning often uses data augmentations to induce some invariance to "...
Stylometry can be used to profile or deanonymize authors against their will based on writing style. ...
Controllable generative sequence models with the capability to extract and replicate the style of sp...
Text Style Transfer, the process of transforming text from one style to another, has gained signific...
Conventional machine learning approaches usually assume that the patterns follow the identical and i...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...