Sentiment analysis is known as one of the most crucial tasks in the field of natural language processing and Convolutional Neural Network (CNN) is one of those prominent models that is commonly used for this aim. Although convolutional neural networks have obtained remarkable results in recent years, they are still confronted with some limitations. Firstly, they consider that all words in a sentence have equal contributions in the sentence meaning representation and are not able to extract informative words. Secondly, they require a large number of training data to obtain considerable results while they have many parameters that must be accurately adjusted. To this end, a convolutional neural network integrated with a hierarchical attention layer is proposed which is able to extract informative words and assign them higher weight. Moreover, the effect of transfer learning that transfers knowledge learned in the source domain to the target domain with the aim of improving the performance is also explored. Based on the empirical results, the proposed model not only has higher classification accuracy and can extract informative words but also applying incremental transfer learning can significantly enhance the classification performance.
翻译:感官分析被认为是自然语言处理和进化神经网络(CNN)领域最关键的任务之一,是用于此目的的突出模式之一。虽然进化神经网络近年来取得了显著的成果,但它们仍面临一些限制。首先,它们认为一个句子中的所有词在句子的含义上都有相同的贡献,无法提取信息文字。第二,它们需要大量的培训数据才能取得大量成果,而它们有许多必须精确调整的参数。为此,提议建立一个具有分层注意的遗传神经网络,能够提取信息文字,并赋予它们更高的份量。此外,还探讨了转让学习将源域所学知识转让到目标领域以改进绩效的效果。根据经验,拟议的模型不仅具有更高的分类准确性,而且能够提取信息词汇,而且还应用渐进式转移学习,可以大大提高分类工作绩效。