Aspect-based sentiment classification (ABSC) is a very challenging subtask of sentiment analysis (SA) and suffers badly from the class-imbalance. Existing methods only process sentences independently, without considering the domain-level relationship between sentences, and fail to provide effective solutions to the problem of class-imbalance. From an intuitive point of view, sentences in the same domain often have high-level semantic connections. The interaction of their high-level semantic features can force the model to produce better semantic representations, and find the similarities and nuances between sentences better. Driven by this idea, we propose a plug-and-play Pairwise Semantic Interaction (PSI) module, which takes pairwise sentences as input, and obtains interactive information by learning the semantic vectors of the two sentences. Subsequently, different gates are generated to effectively highlight the key semantic features of each sentence. Finally, the adversarial interaction between the vectors is used to make the semantic representation of two sentences more distinguishable. Experimental results on four ABSC datasets show that, in most cases, PSI is superior to many competitive state-of-the-art baselines and can significantly alleviate the problem of class-imbalance.
翻译:以视觉为基础的情绪分类(ABSC)是一个极具挑战性的情绪分析(SA)的子任务,并且受到阶级平衡的严重影响。现有的方法只是独立处理判决,不考虑判决之间的域级关系,不能为阶级平衡问题提供有效的解决办法。从直觉的观点看,同一领域的判刑往往具有高层次的语义联系。高层次语义特征的相互作用可以迫使模型产生更好的语义表达,并更好地发现各句之间的相似性和细微差别。受这个想法的驱使,我们建议采用一个插座和播放的对称的语义互动(PSI)模块,该模块以对称的句作为投入,并通过学习两句的语义矢量来获取互动信息。随后,生成了不同的大门来有效地突出每一句的关键语义特征。最后,矢量之间的对抗性互动可以用来使两句的语义表达更加明显不同。四个ABSC数据集的实验结果显示,在大多数情况下,PSI在缓解类稳定方面的问题比许多竞争性的基线。