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UNITN: Training Deep Convolutional Neural Network for Twitter Sentiment Classification

机译:UNITN:训练深度卷积神经网络进行Twitter情感分类

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摘要

This paper describes our deep learning system for sentiment analysis of tweets. The main contribution of this work is a process to initialize the parameter weights of the convolutional neural network, which is crucial to train an accurate model while avoiding the need to inject any additional features. Briefly, we use an unsupervised neural language model to initialize word embeddings that are further tuned by our deep learning model on a distant supervised corpus. At a final stage, the pre-trained parameters of the network are used to initialize the model which is then trained on the supervised training data from Semeval-2015. According to results on the official test sets, our model ranks 1st in the phrase-level subtask A (among 11 teams) and 2nd on the message-level subtask B (among 40 teams). Interestingly, computing an average rank over all six test sets (official and five progress test sets) puts our system 1st in both subtasks A and B.
机译:本文介绍了我们用于推文情感分析的深度学习系统。这项工作的主要贡献是初始化卷积神经网络参数权重的过程,这对于训练精确模型同时避免注入任何其他特征至关重要。简而言之,我们使用无监督的神经语言模型来初始化词的嵌入,这些词的嵌入将由我们的深度学习模型在遥远的有监督语料库上进行进一步的调整。在最后阶段,使用网络的预训练参数来初始化模型,然后根据Semeval-2015的监督训练数据对模型进行训练。根据官方测试集的结果,我们的模型在短语级别子任务A(11个团队中)中排名第一,在消息级别子任务B(40个团队中)中排名第二。有趣的是,计算所有六个测试集(官方测试集和五个进度测试集)的平均排名会使我们的系统在子任务A和B中均排名第一。

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