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Transformer based Deep Intelligent Contextual Embedding for Twitter sentiment analysis

机译:基于变压器基于Twitter情感分析的深度智能语境嵌入

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摘要

Along with the emergence of the Internet, the rapid development of handheld devices has democratized content creation due to the extensive use of social media and has resulted in an explosion of short informal texts. Although a sentiment analysis of these texts is valuable for many reasons, this task is often perceived as a challenge given that these texts are often short, informal, noisy, and rich in language ambiguities, such as polysemy. Moreover, most of the existing sentiment analysis methods are based on clean data. In this paper, we present DICEt, a transformer-based method for sentiment analysis that encodes representation from a transformer and applies deep intelligent contextual embedding to enhance the quality of tweets by removing noise while taking word sentiments, polysemy, syntax, and semantic knowledge into account. We also use the bidirectional long- and short-term memory network to determine the sentiment of a tweet. To validate the performance of the proposed framework, we perform extensive experiments on three benchmark datasets, and results show that DICEt considerably outperforms the state of the art in sentiment classification.
机译:随着互联网的出现,手持设备的快速发展由于广泛使用社交媒体而导致民主化的内容创作,并导致了短缺的非正式文本爆炸。虽然这些文本的情感分析是有价值的,但由于许多原因,这项任务往往被认为是一个挑战,因为这些文本通常是短暂的,非正式,嘈杂,富有语言歧义的挑战,例如聚义。此外,大多数现有的情绪分析方法都基于清洁数据。在本文中,我们呈现DICET,一种基于变压器的情感分析方法,用于编码变压器的表示,并应用深度智能语境嵌入,通过去除词语情绪,多义,语法和语义知识时,通过去除噪音来提高推文的质量帐户。我们还使用双向长期和短期内存网络来确定推文的情绪。为了验证所提出的框架的性能,我们在三个基准数据集上进行广泛的实验,结果表明DICET在情感分类中表明最终最先进的状态。

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