Multi-source domain adaptation for dependency parsing via domain-aware feature generation

IF 3.1 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Ying Li, Zhenguo Zhang, Yantuan Xian, Zhengtao Yu, Shengxiang Gao, Cunli Mao, Yuxin Huang
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引用次数: 0

Abstract

With deep representation learning advances, supervised dependency parsing has achieved a notable enhancement. However, when the training data is drawn from various predefined out-domains, the parsing performance drops sharply due to the domain distribution shift. The key to addressing this problem is to model the associations and differences between multiple source and target domains. In this work, we propose an innovative domain-aware adversarial and parameter generation network for multi-source cross-domain dependency parsing where a domain-aware parameter generation network is used for identifying domain-specific features and an adversarial network is used for learning domain-invariant ones. Experiments on the benchmark datasets reveal that our model outperforms strong BERT-enhanced baselines by 2 points in the average labeled attachment score (LAS). Detailed analysis of various domain representation strategies shows that our proposed distributed domain embedding can accurately capture domain relevance, which motivates the domain-aware parameter generation network to emphasize useful domain-specific representations and disregard unnecessary or even harmful ones. Additionally, extensive comparison experiments show deeper insights on the contributions of the two components.

Abstract Image

通过领域感知特征生成,实现依赖关系解析的多源领域适应性
随着深度表示学习的发展,有监督的依赖关系解析能力得到了显著提高。然而,当训练数据来自各种预定义的外域时,解析性能就会因域分布偏移而急剧下降。解决这一问题的关键在于对多个源域和目标域之间的关联和差异进行建模。在这项工作中,我们为多源跨域依赖解析提出了一种创新的领域感知对抗和参数生成网络,其中领域感知参数生成网络用于识别特定领域的特征,对抗网络用于学习领域不变特征。在基准数据集上的实验表明,我们的模型在平均标注附件得分(LAS)方面比强 BERT 增强基线高出 2 分。对各种领域表示策略的详细分析表明,我们提出的分布式领域嵌入能够准确捕捉领域相关性,这促使领域感知参数生成网络强调有用的特定领域表示,而忽略不必要甚至有害的表示。此外,广泛的对比实验还显示了对这两个组件贡献的更深入了解。
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来源期刊
International Journal of Machine Learning and Cybernetics
International Journal of Machine Learning and Cybernetics COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
7.90
自引率
10.70%
发文量
225
期刊介绍: Cybernetics is concerned with describing complex interactions and interrelationships between systems which are omnipresent in our daily life. Machine Learning discovers fundamental functional relationships between variables and ensembles of variables in systems. The merging of the disciplines of Machine Learning and Cybernetics is aimed at the discovery of various forms of interaction between systems through diverse mechanisms of learning from data. The International Journal of Machine Learning and Cybernetics (IJMLC) focuses on the key research problems emerging at the junction of machine learning and cybernetics and serves as a broad forum for rapid dissemination of the latest advancements in the area. The emphasis of IJMLC is on the hybrid development of machine learning and cybernetics schemes inspired by different contributing disciplines such as engineering, mathematics, cognitive sciences, and applications. New ideas, design alternatives, implementations and case studies pertaining to all the aspects of machine learning and cybernetics fall within the scope of the IJMLC. Key research areas to be covered by the journal include: Machine Learning for modeling interactions between systems Pattern Recognition technology to support discovery of system-environment interaction Control of system-environment interactions Biochemical interaction in biological and biologically-inspired systems Learning for improvement of communication schemes between systems
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