2022
DOI: 10.21203/rs.3.rs-1221812/v1
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Self-Attention Networks and Adaptive Support Vector Machine for Aspect-Level Sentiment Classification

Abstract: Aspect-level sentiment classification aims to integrating the context to predict the sentiment polarity of aspect-specific in a text, which has been quite useful and popular, e.g. opinion survey and products’ recommending in e-commerce. Many recent studies exploit a Long Short-Term Memory (LSTM) networks to perform aspect-level sentiment classification, but the limitation of long-term dependencies is not solved well, so that the semantic correlations between each two words of the text are ignored. In addition,… Show more

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(1 citation statement)
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“…Lin [13] proposed to utilize multi-head target-specific selfattention to better capture global dependencies, and introduced target-sensitive transformations to address targetsensitive sentiment. Liu [14]extracted the semantic information between words in the specified aspect words by using multi-head attention and added SVM to replace the softmax function in the classification layer to obtain better sentiment features in high-dimensional space. Li [15]considers acquiring syntactic dependency information and combining semantic information to realize the interaction between aspect words and sentences by referring to attention-based graph convolutional neural (GCN) networks.…”
Section: A Aspect-level Sentiment Classificationmentioning
confidence: 99%
“…Lin [13] proposed to utilize multi-head target-specific selfattention to better capture global dependencies, and introduced target-sensitive transformations to address targetsensitive sentiment. Liu [14]extracted the semantic information between words in the specified aspect words by using multi-head attention and added SVM to replace the softmax function in the classification layer to obtain better sentiment features in high-dimensional space. Li [15]considers acquiring syntactic dependency information and combining semantic information to realize the interaction between aspect words and sentences by referring to attention-based graph convolutional neural (GCN) networks.…”
Section: A Aspect-level Sentiment Classificationmentioning
confidence: 99%