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Attentive Representation Learning With Adversarial Training for Short Text Clustering

Zhang, Wei*; Dong, Chao; Yin, Jianhua; Wang, Jianyong
Science Citation Index Expanded
清华大学; 山东大学

摘要

Short text clustering has far-reaching effects on semantic analysis, showing its importance for multiple applications such as corpus summarization and information retrieval. However, it inevitably encounters the severe sparsity of short text representations, making the previous clustering approaches still far from satisfactory. In this paper, we present a novel attentive representation learning model for shot text clustering, wherein cluster-level attention is proposed to capture the correlations between text representations and cluster representations. Relying on this, the representation learning and clustering for short texts are seamlessly integrated into a unified model. To further ensure robust model training for short texts, we apply adversarial training to the unsupervised clustering setting, by injecting perturbations into the cluster representations. The model parameters and perturbations are optimized alternately through a minimax game. Extensive experiments on four real-world short text datasets demonstrate the superiority of the proposed model over several strong competitors, verifying that robust adversarial training yields substantial performance gains.

关键词

Training Task analysis Computational modeling Perturbation methods Adaptation models Gallium nitride Clustering algorithms Short text clustering representation learning attention mechanisms robust adversarial training