T-LBERT with Domain Adaptation for Cross-Domain Sentiment Classification

Hongye Cao, Qianru Wei, Jiangbin Zheng
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Abstract

Cross-domain sentiment classification transfers the knowledge from the source domain to the target domain lacking supervised information for sentiment classification. Existing cross-domain sentiment classification methods establish connections by extracting domain-invariant features manually. However, these methods have poor adaptability to bridge connections across different domains and ignore important sentiment information. Hence, we propose a Topic Lite Bidirectional Encoder Representations from Transformers (T-LBERT) model with domain adaption to improve the adaptability of cross-domain sentiment classification. It combines the learning content of the source domain and the topic information of the target domain to improve the domain adaptability of the model. Due to the unbalanced distribution of information in the combined data, we apply a two-layer attention adaptive mechanism for classification. A shallow attention layer is applied to weigh the important features of the combined data. Inspired by active learning, we propose a deep domain adaption layer, which actively adjusts model parameters to balance the difference and representativeness between domains. Experimental results on Amazon review datasets demonstrate that the T-LBERT model considerably outperforms other state-of-the-art methods. T-LBERT shows stable classification performance on multiple metrics.
基于领域自适应的T-LBERT跨领域情感分类
跨领域情感分类将缺乏监督信息的知识从源领域转移到目标领域进行情感分类。现有的跨领域情感分类方法通过人工提取领域不变特征来建立联系。然而,这些方法对跨领域连接的适应性较差,并且忽略了重要的情感信息。因此,我们提出了一种具有领域自适应的话题精简双向编码器表示(T-LBERT)模型,以提高跨领域情感分类的适应性。将源领域的学习内容与目标领域的主题信息相结合,提高了模型的领域适应性。由于组合数据中的信息分布不平衡,我们采用了两层注意力自适应机制进行分类。使用一个浅关注层来权衡组合数据的重要特征。受主动学习的启发,我们提出了一种深度域自适应层,该层主动调整模型参数以平衡域间的差异和代表性。在亚马逊评论数据集上的实验结果表明,T-LBERT模型大大优于其他最先进的方法。T-LBERT在多个指标上表现出稳定的分类性能。
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