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HPCC-YNU at SemEval-2020 Task 9: A Bilingual Vector Gating Mechanism for Sentiment Analysis of Code-Mixed Text

机译:HPCC-YNU在Semeval-2020任务9:代码混合文本情感分析的双语矢量门控机制

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It is fairly common to use code-mixing on a social media platform to express opinions and emotions in multilingual societies. The purpose of this task is to detect the sentiment of code-mixed social media text. Code-mixed text poses a great challenge for the traditional NLP system, which currently uses monolingual resources to deal with the problem of multilingual mixing. This task has been solved in the past using lexicon lookup in respective sentiment dictionaries and using a long short-term memory (LSTM) neural network for monolingual resources. In this paper, we (my codalab usemame is kongjun) present a system that uses a bilingual vector gating mechanism for bilingual resources to complete the task. The model consists of two main parts: the vector gating mechanism, which combines the character and word levels, and the attention mechanism, which extracts the important emotional parts of the text. The results show that the proposed system outperforms the baseline algorithm. We achieved fifth place in Spanglish and 19th place in Hinglish.'
机译:在社交媒体平台上使用代码混合以表达多语种社团的意见和情感是相当共同的。此任务的目的是检测代码混合社交媒体文本的情绪。代码混合文本对传统的NLP系统带来了巨大挑战,目前使用单丝资源来处理多语言混合的问题。在过去使用各种情绪词典中的Lexicon查询并使用长短期内存(LSTM)神经网络进行单晶资源来解决此任务。在本文中,我们(我的Codalab UseMame是孔章)呈现一个系统,它使用双语向量门控机制来完成双语资源来完成任务。该模型由两个主要部分组成:矢量选通机制,它结合了字符和字级别,以及提取文本的重要情绪部分的关注机制。结果表明,所提出的系统优于基线算法。我们在Hinglish中获得了第五名中英文和第19位。

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