Co-Regularized Adversarial Learning for Multi-Domain Text Classification
This work improves multi-domain text classification for applications like sentiment analysis, but it is incremental as it builds on existing adversarial learning paradigms.
The paper tackles multi-domain text classification by addressing issues in existing adversarial learning methods, such as incomplete domain alignment and over-confident predictions, and proposes a co-regularized adversarial learning mechanism that outperforms state-of-the-art methods on two benchmarks.
Multi-domain text classification (MDTC) aims to leverage all available resources from multiple domains to learn a predictive model that can generalize well on these domains. Recently, many MDTC methods adopt adversarial learning, shared-private paradigm, and entropy minimization to yield state-of-the-art results. However, these approaches face three issues: (1) Minimizing domain divergence can not fully guarantee the success of domain alignment; (2) Aligning marginal feature distributions can not fully guarantee the discriminability of the learned features; (3) Standard entropy minimization may make the predictions on unlabeled data over-confident, deteriorating the discriminability of the learned features. In order to address the above issues, we propose a co-regularized adversarial learning (CRAL) mechanism for MDTC. This approach constructs two diverse shared latent spaces, performs domain alignment in each of them, and punishes the disagreements of these two alignments with respect to the predictions on unlabeled data. Moreover, virtual adversarial training (VAT) with entropy minimization is incorporated to impose consistency regularization to the CRAL method. Experiments show that our model outperforms state-of-the-art methods on two MDTC benchmarks.