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A Hybrid Approach for Aspect-Based Sentiment Analysis Using a Lexicalized Domain Ontology and Attentional Neural Models

机译:基于词汇化领域本体和注意神经模型的基于方面的情感分析的混合方法

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This work focuses on sentence-level aspect-based sentiment analysis for restaurant reviews. A two-stage sentiment analysis algorithm is proposed. In this method, first a lexicalized domain ontology is used to predict the sentiment and as a back-up algorithm a neural network with a rotatory attention mechanism (LCR-Rot) is utilized. Furthermore, two features are added to the backup algorithm. The first extension changes the order in which the rotatory attention mechanism operates (LCR-Rot-inv). The second extension runs over the rotatory attention mechanism for multiple iterations (LCR-Rot-hop). Using the SemEval-2015 and SemEval-2016 data, we conclude that the two-stage method outperforms the baseline methods, albeit with a small percentage. Moreover, we find that the method where we iterate multiple times over a rotatory attention mechanism has the best performance.
机译:这项工作侧重于针对餐厅点评的基于句子级别的方面情感分析。提出了一种两阶段情感分析算法。在这种方法中,首先使用词汇化领域本体来预测情感,并使用具有旋转注意力机制(LCR-Rot)的神经网络作为备份算法。此外,在备份算法中添加了两个功能。第一个扩展名更改了旋转注意机制的运行顺序(LCR-Rot-inv)。第二个扩展在旋转注意机制上进行多次迭代(LCR-Rot-hop)。使用SemEval-2015和SemEval-2016数据,我们得出结论,两步法优于基线法,尽管百分比很小。此外,我们发现在旋转注意力机制上进行多次迭代的方法具有最佳性能。

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