Aspect-based sentiment analysis (ABSA), exploring sentiment polarity of aspect-given sentence, is a fine-grained task in the field of nature language processing. Previously researches typically tend to predict polarity based on the meaning of aspect and opinions. However, those approaches mainly focus on considering relations implicitly at the word level, ignore the historical impact of other positional words when the aspect appears in a certain position. Therefore, we propose a Position-based Contributive Embeddings (PosCE) to highlight the historical reference to special position aspect. Contribution of each positional words to the polarity is similar to the process of fairly distributing gains to several actors working in coalition (game theory). Therefore, we quote from the method of Shapley Value and finally gain PosCE to enhance the aspect-based representation for ABSA task. Furthermore, the PosCE can also be used for improving performances on multimodal ABSA task. Extensive experiments on both text and text-audio level using SemEval dataset show that the mainstream models advance performance in accuracy and F1 (increase 2.82% and 4.21% on average respectively) by applying our PosCE.
翻译:在自然语言处理领域,基于视觉的情绪分析(ABSA),探索侧面判决的情绪极化,是自然语言处理领域一项细微的任务。以前的研究通常倾向于根据侧面和观点的含义预测极性。然而,这些方法主要侧重于在字层暗含考虑关系,忽略了其他立场词的历史影响,而当该方面出现某种位置时,则忽略了其他立场词的历史影响。因此,我们提议采用基于定位的投影(PosCE)来突出对特殊位置方面的历史参考。每种立场词对极性的贡献类似于将收益公平分配给在联合(游戏理论)中工作的若干行为者的过程。因此,我们引用了“Shapley val val 值” 的方法,并最终获得了“PoscecE”,以加强对ABSA 任务的侧面代表。此外,PosCE还可以用来改进多式联运ABSA 任务的业绩。使用SEMEval数据集对文本和文本-audio级别进行广泛的实验,表明主流模型在准确性和F1(分别提高2.82%和平均4.21%)方面的先进业绩。