New Story
by Writings, Papers and Blogs on Text ModelsJune 1st, 2024
In this study, researchers disentangle latent representations using naturally-occurring structures of paired data.
Author:
(1) Mingda Chen.
3.1 Improving Language Representation Learning via Sentence Ordering Prediction
3.2 Improving In-Context Few-Shot Learning via Self-Supervised Training
4.2 Learning Discourse-Aware Sentence Representations from Document Structures
5 DISENTANGLING LATENT REPRESENTATIONS FOR INTERPRETABILITY AND CONTROLLABILITY
5.1 Disentangling Semantics and Syntax in Sentence Representations
5.2 Controllable Paraphrase Generation with a Syntactic Exemplar
In this chapter, we demonstrated the utility of our proposed latent-variable framework in the context of representation learning (Section 5.1) and controllable generation (Section 5.2). In both cases, we leveraged the structures of paired data to disentangle semantics and syntax in sentence representations. We found that the syntactic and semantic latent variables showed desirable characteristics. For controlled generation, we provided human-annotated evaluation sets to promote future research in this direction. In addition, in a follow-up work, we showed that the multi-task, latent-variable framework can generalize to bilingual text corpora (Chen et al., 2020b).
This paper is available on arxiv under CC 4.0 license.
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