Text Generation with Text-Editing Models
Abstract
Text-editing models have recently become a prominent alternative to seq2seq models for monolingual text-generation tasks such as grammatical error correction, simplification, and style transfer. These tasks share a common trait - they exhibit a large amount of textual overlap between the source and target texts. Text-editing models take advantage of this observation and learn to generate the output by predicting edit operations applied to the source sequence. In contrast, seq2seq models generate outputs word-by-word from scratch thus making them slow at inference time. Text-editing models provide several benefits over seq2seq models including faster inference speed, higher sample efficiency, and better control and interpretability of the outputs. This tutorial provides a comprehensive overview of text-editing models and current state-of-the-art approaches, and analyzes their pros and cons. We discuss challenges related to productionization and how these models can be used to mitigate hallucination and bias, both pressing challenges in the field of text generation.
Cite
@article{arxiv.2206.07043,
title = {Text Generation with Text-Editing Models},
author = {Eric Malmi and Yue Dong and Jonathan Mallinson and Aleksandr Chuklin and Jakub Adamek and Daniil Mirylenka and Felix Stahlberg and Sebastian Krause and Shankar Kumar and Aliaksei Severyn},
journal= {arXiv preprint arXiv:2206.07043},
year = {2022}
}
Comments
Accepted as a tutorial at NAACL 2022