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Solving Data Sparsity for Aspect based Sentiment Analysis using Cross-linguality and Multi-linguality

机译:使用跨语言和多语言为基于方面的情感分析解决数据稀疏性

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Efficient word representations play an important role in solving various problems related to Natural Language Processing (NLP), data mining, text mining etc. The issue of data sparsity poses a great challenge in creating efficient word representation model for solving the underlying problem. The problem is more intensified in resource-poor scenario due to the absence of sufficient amount of corpus. In this work, we propose to minimize the effect of data sparsity by leveraging bilingual word embeddings learned through a parallel corpus. We train and evaluate Long Short Term Memory (LSTM) based architecture for aspect level sentiment classification. The neural network architecture is further assisted by the handcrafted features for the prediction. We showthe efficacy of the proposed model against state-of-the-art methods in two experimental setups i.e. multi-lingual and cross-lingual.
机译:高效的单词表示在解决与自然语言处理(NLP),数据挖掘,文本挖掘等有关的各种问题中起着重要作用。数据稀疏性问题在创建用于解决基本问题的高效的单词表示模型方面提出了巨大的挑战。由于缺乏足够的语料,在资源匮乏的情况下,这个问题更加严重。在这项工作中,我们建议通过利用通过并行语料库学习的双语单词嵌入来最大程度地减少数据稀疏性的影响。我们训练和评估基于长短期记忆(LSTM)的体系结构,以进行方面方面的情感分类。人工预测的功能进一步辅助了神经网络体系结构。我们在两个实验设置(即多语言和跨语言)中展示了针对最新技术提出的模型的有效性。

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