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Bert-based graph unlinked embedding for sentiment analysis

Youkai Jin, Anping Zhao

2023Complex & Intelligent Systems13 citationsDOIOpen Access PDF

Abstract

Abstract Numerous graph neural network (GNN) models have been used for sentiment analysis in recent years. Nevertheless, addressing the issue of over-smoothing in GNNs for node representation and finding more effective ways to learn both global and local information within the graph structure, while improving model efficiency for scalability to large text sentiment corpora, remains a challenge. To tackle these issues, we propose a novel Bert-based unlinked graph embedding (BUGE) model for sentiment analysis. Initially, the model constructs a comprehensive text sentiment heterogeneous graph that more effectively captures global co-occurrence information between words. Next, by using specific sampling strategies, it efficiently preserves both global and local information within the graph structure, enabling nodes to receive more feature information. During the representation learning process, BUGE relies solely on attention mechanisms, without using graph convolutions or aggregation operators, thus avoiding the over-smoothing problem associated with node aggregation. This enhances model training efficiency and reduces memory storage requirements. Extensive experimental results and evaluations demonstrate that the adopted Bert-based unlinked graph embedding method is highly effective for sentiment analysis, especially when applied to large text sentiment corpora.

Topics & Concepts

Computer scienceScalabilityGraphSentiment analysisGraph embeddingEmbeddingTheoretical computer scienceSmoothingArtificial intelligenceNode (physics)Machine learningData miningDatabaseEngineeringComputer visionStructural engineeringSentiment Analysis and Opinion MiningTopic ModelingText and Document Classification Technologies
Bert-based graph unlinked embedding for sentiment analysis | Litcius