Aspect-based sentiment analysis is of great importance and application because of its ability to identify all aspects discussed in the text. However, aspect-based sentiment analysis will be most effective when, in addition to identifying all the aspects discussed in the text, it can also identify their polarity. Most previous methods use the pipeline approach, that is, they first identify the aspects and then identify the polarities. Such methods are unsuitable for practical applications since they can lead to model errors. Therefore, in this study, we propose a multi-task learning model based on Convolutional Neural Networks (CNNs), which can simultaneously detect aspect category and detect aspect category polarity. creating a model alone may not provide the best predictions and lead to errors such as bias and high variance. To reduce these errors and improve the efficiency of model predictions, combining several models known as ensemble learning may provide better results. Therefore, the main purpose of this article is to create a model based on an ensemble of multi-task deep convolutional neural networks to enhance sentiment analysis in Persian reviews. We evaluated the proposed method using a Persian language dataset in the movie domain. Jacquard index and Hamming loss measures were used to evaluate the performance of the developed models. The results indicate that this new approach increases the efficiency of the sentiment analysis model in the Persian language.
翻译:以外观为基础的情绪分析非常重要,而且由于能够确定文本中所讨论的所有方面,因此应用是十分重要的。然而,在除了确定文本中讨论的所有方面外,如果以方为基础的情绪分析还可以找出其极性,则其效果最为有效。大多数以前的方法都使用管道方法,即首先查明各方面,然后查明两极性。这些方法不适于实际应用,因为它们可能导致模型错误。因此,在本研究中,我们提议一个基于动态神经网络的多任务学习模型,它既能探测方方面面类别,又能探测方方面面的极性。单是创建模型也许不能提供最佳预测,并导致偏差和高度差异等错误。为了减少这些错误,提高模型预测的效率,将一些被称为共同学习的模型结合起来,可以提供更好的结果。因此,本文章的主要目的是建立一个基于多层深层神经网络的模型,以加强波斯文评论中的情绪分析。我们用波斯文数据模型评估了拟议的方法。我们用波斯文数据模型评估了该模型,并导致偏差和高度差异性差。为了减少模型的使用波斯文分析结果,而采用新的分析方法。雅平面语言分析方法是用于分析的测量指数和波斯文损失分析方法。