计算机科学
机器翻译
不可用
资源(消歧)
人工智能
自然语言处理
计算机网络
工程类
可靠性工程
作者
Surangika Ranathunga,En-Shiun Annie Lee,Marjana Prifti Skënduli,Ravi Shekhar,Mehreen Alam,Rishemjit Kaur
摘要
Neural Machine Translation (NMT) has seen tremendous growth in the last ten years since the early 2000s and has already entered a mature phase. While considered the most widely used solution for Machine Translation, its performance on low-resource language pairs remains sub-optimal compared to the high-resource counterparts due to the unavailability of large parallel corpora. Therefore, the implementation of NMT techniques for low-resource language pairs has been receiving the spotlight recently, thus leading to substantial research on this topic. This article presents a detailed survey of research advancements in low-resource language NMT (LRL-NMT) and quantitative analysis to identify the most popular techniques. We provide guidelines to select the possible NMT technique for a given LRL data setting based on our findings. We also present a holistic view of the LRL-NMT research landscape and provide recommendations to enhance the research efforts further.
科研通智能强力驱动
Strongly Powered by AbleSci AI