Building user-oriented personalized machine translator based on user-generated textual content

Zhang, P., Guan, Z., Liu, B., Ding, X. (S.) , Lu, T., Gu, H. and Gu, N. (2022) Building user-oriented personalized machine translator based on user-generated textual content. Proceedings of the ACM on Human-Computer Interaction, 6(CSCW2), 280. (doi: 10.1145/3555171)

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Abstract

Machine Translation (MT) has been a very useful tool to assist multilingual communication and collaboration. In recent years, by taking advantage of the exciting developments of neural networks and deep learning, the accuracy and speed of machine translation have been continuously improved. However, most machine translation methods and systems are data-driven. They tend to select a consensus response represented in training data, while a user's preferred linguistic style, which is important for translation comprehension and user experience, is ignored. For this problem, we aim to build a user-oriented personalized machine translation model in this paper. The model aims to learn each user's linguistic style from the textual content that is generated by her/him (User-Generated Textual Content, UGTC) in social media context and generate personalized translation results utilizing several state-of-the-art deep learning techniques like Transformer and pre-training. We also implemented a user-oriented personalized machine translator using Weibo as a case of the source of UGTC to provide a systematical implementation scheme of a user-oriented personalized machine translation system based on our model. The translator was evaluated by automatic evaluation in combination with human evaluation. The results suggest that our model can generate more personalized, natural and lively translation results and enhance the comprehensibility of translation results, which makes its generations more preferred by users versus general translation results.

Item Type:Articles
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Ding, Dr Sharon
Authors: Zhang, P., Guan, Z., Liu, B., Ding, X. (S.), Lu, T., Gu, H., and Gu, N.
College/School:College of Science and Engineering > School of Computing Science
Journal Name:Proceedings of the ACM on Human-Computer Interaction
Publisher:Association for Computing Machinery (ACM)
ISSN:2573-0142
ISSN (Online):2573-0142
Copyright Holders:Copyright © 2022 Association for Computing Machinery
Publisher Policy:Reproduced in accordance with the copyright policy of the publisher

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