The purpose of this paper focuses on two sub-tasks related to aspect-based sentiment analysis, namely, aspect category detection (ACD) and aspect category polarity (ACP) in the Persian language. Its ability to identify all aspects discussed in the text is what makes aspect-based sentiment analysis so important and useful. While aspect-based sentiment analysis analyses all aspects of the text, it will be most useful when it is able to identify their polarity along with their identification. Most of the previous methods only focus on solving one of these sub-tasks separately or use two separate models. Thus, the process is pipelined, that is, the aspects are identified before the polarities are identified. In practice, these methods lead to model errors that are unsuitable for practical applications. In other words, ACD mistakes are sent to ACP. In this paper, we propose a multi-task learning model based on deep neural networks, which can concurrently detect aspect category and detect aspect category polarity. We evaluated the proposed method using a Persian language dataset in the movie domain on different deep learning-based models. Final experiments show that the CNN model has better results than other models. The reason is CNN's capability to extract local features. Since sentiment is expressed using specific words and phrases, CNN has been able to be more efficient in identifying these in this dataset.iments show that the CNN model has better results than other models.
翻译:本文的目的侧重于两个与基于方方面面情绪分析有关的子任务,即波斯语的方面类别探测(ACD)和方面类别极极化(ACP),其确定文本中所讨论的所有方面的能力使基于方方面面的情绪分析变得如此重要和有用。虽然基于方方面面的情绪分析分析分析了文本的所有方面,但如果它能够识别其极性,那么它将非常有用。以前的方法大多只侧重于分别解决其中的一个子任务,或者使用两个不同的模型。因此,这一过程是编审的,即在确定极化之前就已经确定了各个方面。实际上,这些方法导致模型错误的模型不适合实际应用。换句话说,基于方方面面的情绪分析分析分析将发送到非加非加太。在本文件中,我们提出了一个基于深神经网络的多任务学习模型,可以同时检测其侧面类别和极性。我们评估了在电影领域使用波斯语数据集在不同深度学习模型上的拟议方法。最后的实验表明,CNNM模型比其他模型有更好的结果。在实践中,这些模型中显示的模型是更精细的模型。