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NEUROSENT-PDI at SemEval-2018 Task 1: Leveraging a Multi-Domain Sentiment Model for Inferring Polarity in Micro-blog Text

机译:在SemEval-2018上的NEUROSENT-PDI任务1:利用多域情感模型推断微博文本中的极性

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This paper describes the NeuroSent system that participated in SemEval 2018 Task 1. Our system takes a supervised approach that builds on neural networks and word embeddings. Word embeddings were built by starting from a repository of user generated reviews. Thus, they are specific for sentiment analysis tasks. Then, tweets are converted in the corresponding vector representation and given as input to the neural network with the aim of learning the different semantics contained in each emotion taken into account by the SemEval task. The output layer has been adapted based on the characteristics of each subtask. Preliminary results obtained on the provided training set are encouraging for pursuing the investigation into this direction.
机译:本文介绍了参与SemEval 2018任务1的NeuroSent系统。我们的系统采用基于神经网络和词嵌入的监督方法。单词嵌入是通过从用户生成的评论的存储库开始构建的。因此,它们特定于情感分析任务。然后,将推文转换为相应的向量表示形式,并作为输入提供给神经网络,以了解SemEval任务考虑到的每种情感所包含的不同语义。输出层已根据每个子任务的特征进行了调整。在所提供的训练集上获得的初步结果对于鼓励对此方向进行调查是令人鼓舞的。

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