基于方面的情感分析的自适应双图卷积融合网络

IF 1.8 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Chunmei Wang, Yuan Luo, Chunli Meng, Feiniu Yuan
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引用次数: 0

摘要

基于方面的情感分析(ABSA)又称细粒度情感分析,旨在预测句子中特定方面词的情感极性。一些研究通过基于注意力的方法探索了句子中词语之间的语义关联。其他研究则通过使用图卷积网络引入依赖关系来学习句法知识。这些方法在 ABSA 任务中取得了令人满意的结果。然而,由于语言的复杂性,有效捕捉语义和句法知识仍然是一个具有挑战性的研究问题。因此,我们提出了一种用于基于方面的情感分析的自适应双图卷积融合网络(AD-GCFN)。该模型使用了两个图卷积网络:一个用于语义层,通过注意力机制学习语义关联;另一个用于句法层,通过依赖解析学习句法结构。为了减少注意力机制造成的噪音,我们设计了一个动态更新图结构信息的模块,用于自适应聚合节点信息。为了有效融合语义和句法信息,我们提出了交叉融合模块,利用双随机相似矩阵分别获得语义空间中的句法特征和句法空间中的语义特征。此外,我们还采用了两个正则器来进一步提高捕捉语义相关性的能力。正交正则鼓励语义层学习词的语义而不重叠,而差分正则鼓励语义层和句法层学习不同的部分。最后,在三个基准数据集上的实验结果表明,AD-GCFN 模型在准确性和宏F1 方面优于对比模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An adaptive Dual Graph Convolution Fusion Network for Aspect-Based Sentiment Analysis

Aspect-based Sentiment Analysis (ABSA), also known as fine-grained sentiment analysis, aims to predict the sentiment polarity of specific aspect words in the sentence. Some studies have explored the semantic correlation between words in sentences through attention-based methods. Other studies have learned syntactic knowledge by using graph convolution networks to introduce dependency relations. These methods have achieved satisfactory results in the ABSA tasks. However, due to the complexity of language, effectively capturing semantic and syntactic knowledge remains a challenging research question. Therefore, we propose an Adaptive Dual Graph Convolution Fusion Network (AD-GCFN) for aspect-based sentiment analysis. This model uses two graph convolution networks: one for the semantic layer to learn semantic correlations by an attention mechanism, and the other for the syntactic layer to learn syntactic structure by dependency parsing. To reduce the noise caused by the attention mechanism, we designed a module that dynamically updates the graph structure information for adaptively aggregating node information. To effectively fuse semantic and syntactic information, we propose a cross-fusion module that uses the double random similarity matrix to obtain the syntactic features in the semantic space and the semantic features in the syntactic space, respectively. Additionally, we employ two regularizers to further improve the ability to capture semantic correlations. The orthogonal regularizer encourages the semantic layer to learn word semantics without overlap, while the differential regularizer encourages the semantic and syntactic layers to learn different parts. Finally, the experimental results on three benchmark datasets show that the AD-GCFN model is superior to the contrast models in terms of accuracy and macro-F1.

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来源期刊
CiteScore
3.60
自引率
15.00%
发文量
241
期刊介绍: The ACM Transactions on Asian and Low-Resource Language Information Processing (TALLIP) publishes high quality original archival papers and technical notes in the areas of computation and processing of information in Asian languages, low-resource languages of Africa, Australasia, Oceania and the Americas, as well as related disciplines. The subject areas covered by TALLIP include, but are not limited to: -Computational Linguistics: including computational phonology, computational morphology, computational syntax (e.g. parsing), computational semantics, computational pragmatics, etc. -Linguistic Resources: including computational lexicography, terminology, electronic dictionaries, cross-lingual dictionaries, electronic thesauri, etc. -Hardware and software algorithms and tools for Asian or low-resource language processing, e.g., handwritten character recognition. -Information Understanding: including text understanding, speech understanding, character recognition, discourse processing, dialogue systems, etc. -Machine Translation involving Asian or low-resource languages. -Information Retrieval: including natural language processing (NLP) for concept-based indexing, natural language query interfaces, semantic relevance judgments, etc. -Information Extraction and Filtering: including automatic abstraction, user profiling, etc. -Speech processing: including text-to-speech synthesis and automatic speech recognition. -Multimedia Asian Information Processing: including speech, image, video, image/text translation, etc. -Cross-lingual information processing involving Asian or low-resource languages. -Papers that deal in theory, systems design, evaluation and applications in the aforesaid subjects are appropriate for TALLIP. Emphasis will be placed on the originality and the practical significance of the reported research.
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