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Using Deep Neural Networks for Extracting Sentiment Targets in Arabic Tweets

机译:使用深神经网络在阿拉伯语推文中提取情绪目标

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In this paper, we investigate the problem of recognizing entities which are targeted by text sentiment in Arabic tweets. To do so, we train a bidirectional LSTM deep neural network with conditional random fields as a classification layer on top of the network to discover the features of this specific set of entities and extract them from Arabic tweets. We've evaluated the network performance against a baseline method which makes use of a regular named entity recognizer and a sentiment analyzer. The deep neural network has shown a noticeable advantage in extracting sentiment target entities from Arabic tweets.
机译:在本文中,我们调查了以阿拉伯语推文中的文本情绪为目标的识别实体的问题。为此,我们将双向LSTM深神经网络用条件随机字段作为网络顶部的分类层,以发现该特定实体集的特征,并从阿拉伯语推文中提取它们。我们已经评估了对基线方法的网络性能,这是使用常规命名实体识别器和情感分析器的基线方法。深度神经网络在从阿拉伯语推文中提取情绪靶实体中,是一个明显的优势。

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