Opinion target extraction (OTE) or aspect extraction (AE) is a fundamental task in opinion mining that aims to extract the targets (or aspects) on which opinions have been expressed. Recent work focus on cross-domain OTE, which is typically encountered in real-world scenarios, where the testing and training distributions differ. Most methods use domain adversarial neural networks that aim to reduce the domain gap between the labelled source and unlabelled target domains to improve target domain performance. However, this approach only aligns feature distributions and does not account for class-wise feature alignment, leading to suboptimal results. Semi-supervised learning (SSL) has been explored as a solution, but is limited by the quality of pseudo-labels generated by the model. Inspired by the theoretical foundations in domain adaptation [2], we propose a new SSL approach that opts for selecting target samples whose model output from a domain-specific teacher and student network disagree on the unlabelled target data, in an effort to boost the target domain performance. Extensive experiments on benchmark cross-domain OTE datasets show that this approach is effective and performs consistently well in settings with large domain shifts.
翻译:意见目标提取( OTE) 或方面提取( AE) 是一项基本任务, 旨在提取表达观点的目标( 或方面) 。 最近的工作重点是跨域 OTE, 通常在现实世界情景中遇到, 测试和培训分布不同。 多数方法使用域对称神经网络, 目的是缩小标签源与无标签目标域之间的域差, 以提高目标域性性能。 但是, 这种方法只对特性分布进行匹配, 不考虑类别特性匹配, 导致低于最佳效果 。 半监督学习( SSL) 作为一种解决方案已经探索过, 但由于模型产生的伪标签质量而受到限制 。 受领域适应理论基础的启发 [2], 我们提出了一个新的 SSLL 方法, 选择选择选择目标样本, 其模型输出来自特定域的教师和学生网络, 对未标的目标性数据有异议, 以努力提升目标域性能 。 关于基准跨域域域域的大规模实验显示, 这种方法是有效的, 并在大型域内进行持续地进行 。</s>