Myo Mar Thinn, Ye Kyaw Thu, Hlaing Myat Nwe, Nyo Nyo Yee, Thandar Myint, Hninn Aye Thant, T. Supnithi
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引用次数: 0
摘要
本文描述了LATEX编码数学方程到口语数学句子的机器翻译。开发了一个数学口语平行语料库(5600个句子)。本文采用基于短语的统计机器翻译(PBSMT)、加权有限状态传感器(WFST)和Ripple Down Rules (RDR)标记方法进行了10倍交叉验证实验。BLEU, RIBES, F1和WER评估评分指标用于衡量翻译性能。实验结果表明,PBSMT方法对LATEX数学方程到口语数学句子的翻译效果最好。此外,我们发现RDR方法的翻译性能与PBSMT方法相当。
Machine Translation of LATEX Based Mathematical Equations to Spoken Mathematics
This paper describes the machine translation of LATEX encoded mathematical equations to spoken mathematical sentences. A LATEX- Spoken math parallel corpus (5,600 sentences) was developed. In this paper, the 10-fold cross-validation experiments were carried out by applying Phrase-based Statistical Machine Translation (PBSMT), Weighted Finite-State Transducers (WFST) and Ripple Down Rules (RDR) based tagging approaches. The BLEU, RIBES, F1 and WER evaluation scoring metrics are used for measuring translation performance. The experimental results show that the PBSMT approach achieved the highest translation performance for LATEX mathematical equations to spoken mathematical sentences translation. Moreover, we found that the translation performance of RDR approach is comparable with PBSMT.