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HUMIR at IEST-2018: Lexicon-Sensitive and Left-Right Context-Sensitive BiLSTM for Implicit Emotion Recognition

机译:IEST-2018的HUIR:Lexicon敏感和左右背景敏感的Bilstm,用于隐式情绪识别

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This paper describes the approaches used in HUMIR system for the WASSA-2018 shared task on the implicit emotion recognition. The objective of this task is to predict the emotion expressed by the target word that has been excluded from the given tweet. We suppose this task as a word sense disambiguation in which the target word is considered as a synthetic word that can express 6 emotions depending on the context. To predict the correct emotion, we propose a deep neural network model that uses two BiLSTM networks to represent the contexts in the left and right sides of the target word. The BiLSTM outputs achieved from the left and right contexts are considered as context-sensitive features. These features are used in a feed-forward neural network to predict the target word emotion. Besides this approach, we also combine the BiLSTM model with lexicon-based and emotion-based features. Finally, we employ all models in the final system using Bagging ensemble method. We achieved macro F-measure value of 68.8 on the official test set and ranked sixth out of 30 participants.
机译:本文介绍了WASEA-2018共享任务的HURIR系统中使用的方法对隐式情感认可。这项任务的目的是预测目标词表所表达的情绪,这些词被排除在给定推文中。我们认为这项任务是一个词感歧义,其中目标词被认为是可以根据上下文表达6个情绪的合成词。为了预测正确的情感,我们提出了一个深度神经网络模型,它使用两个Bilstm网络来表示目标字的左侧和右侧的上下文。从左和右上下文中实现的Bilstm输出被视为上下文敏感功能。这些特征用于前馈神经网络中以预测目标词情绪。除了这种方法之外,我们还将Bilstm模型与基于词汇的和情感为基础的功能组合。最后,我们使用Bagging Ensemble方法雇用最终系统中的所有模型。我们在官方测试集中实现了68.8的宏观度量值,并在30名参与者中排名第六。

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