cs.AI updates on arXiv.org 10月08日
基于监督学习的古吉拉特语机器翻译评估方法
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本文提出了一种基于监督学习的古吉拉特语机器翻译评估方法,通过实验验证了该方法在古吉拉特语翻译中的有效性,并与其他评估指标进行了比较。

arXiv:2510.05113v1 Announce Type: cross Abstract: Machine Translation (MT) Evaluation is an integral part of the MT development life cycle. Without analyzing the outputs of MT engines, it is impossible to evaluate the performance of an MT system. Through experiments, it has been identified that what works for English and other European languages does not work well with Indian languages. Thus, In this paper, we have introduced a reference-based MT evaluation metric for Gujarati which is based on supervised learning. We have trained two versions of the metric which uses 25 features for training. Among the two models, one model is trained using 6 hidden layers with 500 epochs while the other model is trained using 10 hidden layers with 500 epochs. To test the performance of the metric, we collected 1000 MT outputs of seven MT systems. These MT engine outputs were compared with 1 human reference translation. While comparing the developed metrics with other available metrics, it was found that the metrics produced better human correlations.

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机器翻译 评估方法 古吉拉特语 监督学习 翻译质量
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