Sentiment Domain Adaptation with Multi-Level Contextual Sentiment Knowledge

Fangzhao Wu, Sixing Wu, Yongfeng Huang, Songfang Huang, Yong Qin
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引用次数: 12

Abstract

Sentiment domain adaptation is widely studied to tackle the domain-dependence problem in sentiment analysis field. Existing domain adaptation methods usually train a sentiment classifier in a source domain and adapt it to the target domain using transfer learning techniques. However, when the sentiment feature distributions of the source and target domains are significantly different, the adaptation performance will heavily decline. In this paper, we propose a new sentiment domain adaptation approach by adapting the sentiment knowledge in general-purpose sentiment lexicons to a specific domain. Since the general sentiment words of general-purpose sentiment lexicons usually convey consistent sentiments in different domains, they have better generalization performance than the sentiment classifier trained in a source domain. In addition, we propose to extract various kinds of contextual sentiment knowledge from massive unlabeled samples in target domain and formulate them as sentiment relations among sentiment expressions. It can propagate the sentiment information in general sentiment words to massive domain-specific sentiment expressions. Besides, we propose a unified framework to incorporate these different kinds of sentiment knowledge and learn an accurate domain-specific sentiment classifier for target domain. Moreover, we propose an efficient optimization algorithm to solve the model of our approach. Extensive experiments on benchmark datasets validate the effectiveness and efficiency of our approach.
基于多层次语境情感知识的情感域自适应
为了解决情感分析领域中的领域依赖问题,情感领域自适应技术得到了广泛的研究。现有的领域自适应方法通常是在源领域训练情感分类器,并使用迁移学习技术使其适应目标领域。然而,当源域和目标域的情感特征分布显著不同时,自适应性能将严重下降。本文提出了一种新的情感领域自适应方法,将通用情感词典中的情感知识适配到特定的情感领域。由于通用情感词典中的通用情感词通常在不同的领域传达一致的情感,因此它们比在源领域中训练的情感分类器具有更好的泛化性能。此外,我们提出从目标域的大量未标记样本中提取各种上下文情感知识,并将其表述为情感表达之间的情感关系。它可以将一般情感词中的情感信息传播到海量的特定领域的情感表达中。此外,我们提出了一个统一的框架来整合这些不同类型的情感知识,并为目标领域学习准确的特定于领域的情感分类器。此外,我们还提出了一种有效的优化算法来求解我们方法的模型。在基准数据集上的大量实验验证了我们方法的有效性和效率。
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