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Graph Neural Network Framework for Sentiment Analysis Using Syntactic Feature

Linxiao WuColumbia University,New York,USAYuanshuai LuoSouthwest Jiaotong University,Chengdu,ChinaBinrong ZhuSan Francisco State University,San Francisco,USAGuiran LiuSan Francisco State University,San Francisco,USARui WangCarnegie Mellon University,Pittsburgh,USAQin YuTrine University,Detroit,USA
2024en
ABI

Аннотация

Amidst the swift evolution of social media platforms and e-commerce ecosystems, the domain of opinion mining has surged as a pivotal area of exploration within natural language processing. A specialized segment within this field focuses on extracting nuanced evaluations tied to particular elements within textual contexts. This research advances a composite framework that amalgamates the positional cues of topical descriptors. The proposed system converts syntactic structures into a matrix format, leveraging convolutions and attention mechanisms within a graph to distill salient characteristics. Incorporating the positional relevance of descriptors relative to lexical items enhances the sequential integrity of the input. Trials have substantiated that this integrated graph-centric scheme markedly elevates the efficacy of evaluative categorization, showcasing preeminence across a spectrum of established reference datasets.

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Цитирований: 3Использованных источников: 0