Recently, some span-based methods have achieved encouraging performances for joint aspect-sentiment analysis, which first extract aspects (aspect extraction) by detecting aspect boundaries and then classify the span-level sentiments (sentiment classification). However, most existing approaches either sequentially extract task-specific features, leading to insufficient feature interactions, or they encode aspect features and sentiment features in a parallel manner, implying that feature representation in each task is largely independent of each other except for input sharing. Both of them ignore the internal correlations between the aspect extraction and sentiment classification. To solve this problem, we novelly propose a hierarchical interactive network (HI-ASA) to model two-way interactions between two tasks appropriately, where the hierarchical interactions involve two steps: shallow-level interaction and deep-level interaction. First, we utilize cross-stitch mechanism to combine the different task-specific features selectively as the input to ensure proper two-way interactions. Second, the mutual information technique is applied to mutually constrain learning between two tasks in the output layer, thus the aspect input and the sentiment input are capable of encoding features of the other task via backpropagation. Extensive experiments on three real-world datasets demonstrate HI-ASA's superiority over baselines.
翻译:最近,一些基于跨区域的方法取得了令人鼓舞的表现,以便进行联合方面压力分析,这些方法首先通过探测方面边界来提取一些方面(深度抽取),然后对跨层次情绪(压力分类)进行分类。然而,大多数现有方法要么是按顺序抽取具体任务特征,导致特征互动不足,或者以平行的方式将不同特点和情绪特征编码,这意味着每项任务中的特点代表基本上彼此独立,但投入共享除外。这两种方法都忽略了方面抽取和情绪分类之间的内在联系。为了解决这一问题,我们新建议建立一个等级互动网络(HI-ASA),以适当模式在两个任务之间进行双向互动,等级互动涉及两个步骤:浅层次互动和深度互动。首先,我们利用跨窗口机制,有选择地将不同任务特点结合起来,作为确保适当的双向互动的投入。第二,相互信息技术用于在产出层的两项任务中相互制约学习,因此,方面投入和情绪输入能够通过背对等化将其他任务的特点进行编码。关于三个实体-世界数据系统基线的大规模实验展示超越空间的高度。