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Neural Machine Translation by Fusing Key Information of Text
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作者 shijie hu Xiaoyu Li +8 位作者 Jiayu Bai Hang Lei Weizhong Qian Sunqiang hu Cong Zhang Akpatsa Samuel Kofi Qian Qiu Yong Zhou Shan Yang 《Computers, Materials & Continua》 SCIE EI 2023年第2期2803-2815,共13页
When the Transformer proposed by Google in 2017,it was first used for machine translation tasks and achieved the state of the art at that time.Although the current neural machine translation model can generate high qu... When the Transformer proposed by Google in 2017,it was first used for machine translation tasks and achieved the state of the art at that time.Although the current neural machine translation model can generate high quality translation results,there are still mistranslations and omissions in the translation of key information of long sentences.On the other hand,the most important part in traditional translation tasks is the translation of key information.In the translation results,as long as the key information is translated accurately and completely,even if other parts of the results are translated incorrect,the final translation results’quality can still be guaranteed.In order to solve the problem of mistranslation and missed translation effectively,and improve the accuracy and completeness of long sentence translation in machine translation,this paper proposes a key information fused neural machine translation model based on Transformer.The model proposed in this paper extracts the keywords of the source language text separately as the input of the encoder.After the same encoding as the source language text,it is fused with the output of the source language text encoded by the encoder,then the key information is processed and input into the decoder.With incorporating keyword information from the source language sentence,the model’s performance in the task of translating long sentences is very reliable.In order to verify the effectiveness of the method of fusion of key information proposed in this paper,a series of experiments were carried out on the verification set.The experimental results show that the Bilingual Evaluation Understudy(BLEU)score of the model proposed in this paper on theWorkshop on Machine Translation(WMT)2017 test dataset is higher than the BLEU score of Transformer proposed by Google on the WMT2017 test dataset.The experimental results show the advantages of the model proposed in this paper. 展开更多
关键词 Key information TRANSFORMER FUSION neural machine translation
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财务舞弊动因及治理分析——以康美药业为例
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作者 胡诗婕 陈国平 《管理科学与研究(中英文版)》 2022年第6期42-45,共4页
从以往财务舞弊行为调查中能够了解到,高层管理者往往会参与其中,导致故意舞弊行为很难被察觉,为投资者带来巨大经济损失,甚至还会影响到整个资本市场的正常运转。因此,相关部门和企业应提升对财务舞弊问题的治理力度,降低相关问题出现... 从以往财务舞弊行为调查中能够了解到,高层管理者往往会参与其中,导致故意舞弊行为很难被察觉,为投资者带来巨大经济损失,甚至还会影响到整个资本市场的正常运转。因此,相关部门和企业应提升对财务舞弊问题的治理力度,降低相关问题出现的可能性。本文以康美药业为研究对象,对财务舞弊动因进行总结,论述了财务舞弊问题的防范策略。 展开更多
关键词 财务舞弊 康美药业 融资
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