Aspects of Terminological and Named Entity Knowledge within Rule-Based Machine Translation Models for Under-Resourced Neural Machine Translation Scenarios

09/28/2020
by   Daniel Torregrosa, et al.
0

Rule-based machine translation is a machine translation paradigm where linguistic knowledge is encoded by an expert in the form of rules that translate text from source to target language. While this approach grants extensive control over the output of the system, the cost of formalising the needed linguistic knowledge is much higher than training a corpus-based system, where a machine learning approach is used to automatically learn to translate from examples. In this paper, we describe different approaches to leverage the information contained in rule-based machine translation systems to improve a corpus-based one, namely, a neural machine translation model, with a focus on a low-resource scenario. Three different kinds of information were used: morphological information, named entities and terminology. In addition to evaluating the general performance of the system, we systematically analysed the performance of the proposed approaches when dealing with the targeted phenomena. Our results suggest that the proposed models have limited ability to learn from external information, and most approaches do not significantly alter the results of the automatic evaluation, but our preliminary qualitative evaluation shows that in certain cases the hypothesis generated by our system exhibit favourable behaviour such as keeping the use of passive voice.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/12/2017

Learning to Parse and Translate Improves Neural Machine Translation

There has been relatively little attention to incorporating linguistic p...
research
09/09/2020

Central Yup'ik and Machine Translation of Low-Resource Polysynthetic Languages

Machine translation tools do not yet exist for the Yup'ik language, a po...
research
09/26/2017

Improving a Multi-Source Neural Machine Translation Model with Corpus Extension for Low-Resource Languages

In machine translation, we often try to collect resources to improve its...
research
10/05/2022

Revisiting Syllables in Language Modelling and their Application on Low-Resource Machine Translation

Language modelling and machine translation tasks mostly use subword or c...
research
04/05/2020

Reference Language based Unsupervised Neural Machine Translation

Exploiting common language as an auxiliary for better translation has a ...
research
10/06/2020

Converting the Point of View of Messages Spoken to Virtual Assistants

Virtual Assistants can be quite literal at times. If the user says "tell...

Please sign up or login with your details

Forgot password? Click here to reset