A dependency-based hybrid deep learning framework for target-dependent sentiment classification

J Liu, S Li - Pattern Recognition Letters, 2023 - Elsevier
J Liu, S Li
Pattern Recognition Letters, 2023Elsevier
One of the main challenges in target-dependent sentiment classification (TDSC) is dealing
with sentences that contain multiple targets with varying polarities. Traditional sentiment
analysis has shown the effectiveness of language characteristics. Therefore, we propose a
method to extract target semantic-related tokens from sentences in order to simplify the
sentiment classification task. To achieve this, we establish six grammatical principles that
utilize grammatical knowledge to filter the relevant descriptions of targets. Since a target is …
Abstract
One of the main challenges in target-dependent sentiment classification (TDSC) is dealing with sentences that contain multiple targets with varying polarities. Traditional sentiment analysis has shown the effectiveness of language characteristics. Therefore, we propose a method to extract target semantic-related tokens from sentences in order to simplify the sentiment classification task. To achieve this, we establish six grammatical principles that utilize grammatical knowledge to filter the relevant descriptions of targets. Since a target is typically a noun and acts as a subject, we summarize the six rules to extract the contexts contained in the objects and subordinate clauses. We use dependency parsing to analyze the grammatical relations between the target and its context. We design a data pre-processing method called Text Filtering (TF) to automate this procedure. After executing the TF algorithm, we pass the target-related words to a simple classifier to predict their sentiment polarities. Rather than feeding these features directly to a network and letting it learn features on its own, our approach employs dependency relations to extract context linked to the target. This provides the network with meaningful and representative features, resulting in superior results. We conduct ablation studies to investigate the effectiveness of the proposed TF algorithm. In the restaurant hard dataset, our approach improves accuracy by 13.76% and macro-F1 by 14.65% compared to a CNN-based method where TF is not implemented.
Elsevier
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