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Semi-supervised Aspect-level Sentiment Classification Model based on Variational Autoencoder

机译:基于变分自动编码器的半监督方面层次情感分类模型

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Aspect-level sentiment classification aims to predict the sentiment of a text in different aspects and it is a fine-grained sentiment analysis task. Recent work exploits an Attention-based Long Short-Term Memory Network to perform aspect-level sentiment classification. Most previous work are based on supervised learning that needs a large number of labeled samples, but the problem is that only a limited subset of data samples are labeled in practical applications. To solve this problem, we propose a novel Semi-supervised Aspect Level Sentiment Classification Model based on Variational Autoencoder (AL-SSVAE) for semi-supervised learning in the aspect-level sentiment classification. The AL-SSVAE model inputs a given aspect to an encoder a decoder based on a variational autoencoder (VAE), and it also has an aspect level sentiment classifier. It enables the attention mechanism to deal with different parts of a text when different aspects are taken as input as previous methods. Due to that the sentiment polarity of a word is usually sensitive to the given aspect, a single vector for a word is problematic. Therefore, we propose the aspect-specific word embedding learning from a topical word embeddings model to express a word and also append the corresponding sentiment vector into the word input vector. We compare our AL-SSVAE model with several recent aspect-level sentiment classification models on the SemEval 2016 dataset. The experimental results indicate that the proposed model is able to capture more accurate semantics and sentiment for the given aspect and obtain better performance on the task of the aspect level sentiment classification. Moreover, the AL-SSVAE model is able to learn with the semi-supervised mode in the aspect level sentiment classification, which enables it to learn efficiently using less labeled data. (C) 2019 Elsevier B.V. All rights reserved.
机译:方面级别的情感分类旨在预测文本在不同方面的情感,这是一种细粒度的情感分析任务。最近的工作利用基于注意力的长期短期记忆网络来执行方面级别的情感分类。以前的大多数工作都是基于需要大量标记样本的监督学习,但是问题在于,在实际应用中,只有有限的一部分数据样本被标记。为了解决这个问题,我们提出了一种基于变分自编码器(AL-SSVAE)的新型半监督方面水平情感分类模型,用于方面水平情感分类中的半监督学习。 AL-SSVAE模型将给定的方面输入到基于变分自动编码器(VAE)的解码器的编码器中,并且还具有方面级别的情感分类器。当以前的方法将不同方面作为输入时,它使注意力机制能够处理文本的不同部分。由于单词的情感极性通常对给定的方面敏感,因此单词的单个向量是有问题的。因此,我们提出从主题词嵌入模型中进行方面特定的词嵌入学习,以表达一个词,并将相应的情感向量附加到词输入向量中。我们将我们的AL-SSVAE模型与SemEval 2016数据集上的几个近期方面级别的情感分类模型进行了比较。实验结果表明,所提出的模型能够针对给定方面捕获更准确的语义和情感,并在方面级别的情感分类任务上获得更好的性能。此外,AL-SSVAE模型能够在方面级别的情感分类中使用半监督模式进行学习,从而使其能够使用较少标记的数据进行有效学习。 (C)2019 Elsevier B.V.保留所有权利。

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