Graph Neural Network Framework for Sentiment Analysis Using Syntactic Feature
This work addresses sentiment analysis for social media and e-commerce applications, representing an incremental improvement in the field.
The researchers tackled sentiment analysis by developing a graph neural network framework that incorporates syntactic features and positional cues of topical descriptors, achieving superior performance in evaluative categorization.
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.