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首页> 外文期刊>Modern Physics Letters, B. Condensed Matter Physics, Statistical Physics, Applied Physics >Language identification framework in code-mixed social media text based on quantum LSTM - the word belongs to which language?
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Language identification framework in code-mixed social media text based on quantum LSTM - the word belongs to which language?

机译:基于量子LSTM的代码混合社交媒体文本中语言识别框架 - 这个词属于哪种语言?

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摘要

Machine learning (ML) architectures based on neural model have garnered considerable attention in the field of language classification. Code-mixing is a common phenomenon on social networking sites for exhibiting opinion on a topic. The code-mixed text is the approach of mixing two or more languages. This paper describes the application of the code-mixed index in Indian social media texts and compares the complexity to identify language at the word level using Bi-directional Long Short-Term Memory model. The major contribution of the work is to propose a technique for identifying the language of Hindi-English code-mixed data used in three social media platforms namely, Facebook, Twitter and WhatsApp. Here, we demonstrate that a special class of quantum LSTM network model is capable of learning and accurately predicting the languages used in social media texts. Our work paves the way for future applications of machine learning methods in quantum dynamics without relying on the explicit form of the Hamiltonian.
机译:基于神经模型的机器学习(ML)架构在语言分类领域获得了相当大的关注。代码混合是社交网站上的常见现象,用于展示一个主题的意见。代码混合文本是混合两种或多种语言的方法。本文介绍了代码混合索引在印度社交媒体文本中的应用,并使用双向长期短期内存模型对语言识别语言的复杂性。这项工作的主要贡献是提出一种用于识别三个社交媒体平台中使用的印度英语代码混合数据的语言,即Facebook,Twitter和Whatsapp。在这里,我们证明了一类特殊的量子LSTM网络模型能够学习和准确地预测社交媒体文本中使用的语言。我们的工作为未来的机器学习方法在量子动态的情况下铺平了道路,而无需依赖于汉密尔顿人的明确形式。

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