dc.description.abstract |
Artificial Intelligence (AI) is rapidly changing the world, affecting every
aspect of human daily lives. Natural Language Processing (NLP) is itself a broad field
that lies under AI. NLP depends upon linguistics and is responsible for making
computers understand text and spoken words the same way humans do. NLP
combines rule-based modeling concepts for human speech language, computational
linguistics with some statistics, Machine Learning, and Deep Learning to enable
computers to understand human speech language, which can be in the form of text or
voice data.
Machine Translation (MT), translates meaningful text from one specific
language to another language without human involvement. The research area of NLP
in machine translation has been a significant advancement in the research area of AI.
NLP allows computers to comprehend, analyze, and generate human language in a
way that’s more organic and contextual. It involves several subtasks such as part-of-
speech tagging, sentiment analysis, named entity recognition, and more. These are
applied in various stages of the translation process, augmenting the understanding of
the specific source language and the generation of the target language. Incorporating
NLP into machine translation has enhanced its capabilities and has led to the creation
of more sophisticated translation models. However, it is important to note that NLP-
based machine translation is still a developing field. Challenges such as handling low-
resource languages, maintaining the source text’s style and tone in the translated
version, and understanding cultural references and idioms still persist.
Transfer learning, although its exact nature is unknown, enhances the quality
of machine translation for low-resource systems. While there are many advantages to
transfer learning, the three primary ones are reduced training time, improved neural
network performance (for the most part), and reduced data requirements. The main
problem of some Machine Translation (MT) systems is the need for a large range of
parallel resource data for source-to-target language translation. To overcome this
problem, previous research has shown that pivoting, if the pivot language is closely
connected to the source and target language pair, produces translations of higher
quality. In this exploration, pivot transfer learning-based MT is applied for the
translation from Myanmar language to Wa language using English as the pivot
language (Myanmar-English and English-Wa). |
en_US |