Publication | Open Access
Convolution over Hierarchical Syntactic and Lexical Graphs for Aspect Level Sentiment Analysis
253
Citations
28
References
2020
Year
Unknown Venue
Syntactic ParsingEngineeringMultimodal Sentiment AnalysisCorpus LinguisticsSentiment AnalysisLanguage ProcessingText MiningGlobal Lexical GraphNatural Language ProcessingWord EmbeddingsSyntaxData ScienceComputational LinguisticsConcept HierarchyCorpus AnalysisLanguage StudiesNlp TaskLexical GraphsSemantic ParsingHierarchical SyntacticAspect-level Sentiment ClassificationLinguistics
The state-of-the-art methods in aspect-level sentiment classification have leveraged the graph based models to incorporate the syntactic structure of a sentence. While being effective, these methods ignore the corpus level word co-occurrence information, which reflect the collocations in linguistics like “nothing special”. Moreover, they do not distinguish the different types of syntactic dependency, e.g., a nominal subject relation “food-was” is treated equally as an adjectival complement relation “was-okay” in “food was okay”. To tackle the above two limitations, we propose a novel architecture which convolutes over hierarchical syntactic and lexical graphs. Specifically, we employ a global lexical graph to encode the corpus level word co-occurrence information. Moreover, we build a concept hierarchy on both the syntactic and lexical graphs for differentiating various types of dependency relations or lexical word pairs. Finally, we design a bi-level interactive graph convolution network to fully exploit these two graphs. Extensive experiments on five bench- mark datasets show that our method outperforms the state-of-the-art baselines.
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