基于句子层次表示的多尺度讽刺情感识别算法

Yurong Hao, Long Zhang, Qiusheng Zheng, Liyue Niu
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引用次数: 0

摘要

讽刺是一种特殊的语言情感,广泛应用于各种社交媒体中,用来表达用户强烈的情感。因此,讽刺识别的任务对于社交媒体分析尤为重要。汉语讽刺情感识别的研究很少,往往忽略了句子中不同句法成分之间复杂的相互作用,如情感词、实体、假词和文本中出现的特殊标点符号。为了提高汉语讽刺语识别的准确率,本文提出了一种考虑句子语义信息和不同句法成分之间关系特征的句子分层表示的多尺度神经网络讽刺语识别算法。通过重构分层句法树来区分句子的关键成分,利用多通道卷积网络挖掘句法层之间的关系特征,并将其与语义信息深度融合,完成汉语讽刺情感识别任务。我们在一个公开的中文讽刺评论数据集上对该方法进行了测试,结果表明该方法可以有效地提高中文讽刺情感识别的准确率。
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A multi-scale sarcasm sentiment recognition algorithm incorporating sentence hierarchical representation
Sarcasm is a special kind of linguistic sentiment that is widely used in a wide range of social media to express strong emotions in users. Therefore, the task of sarcasm recognition is particularly important for social media analysis. There are few studies on sarcasm sentiment recognition in Chinese, and they often ignore the complex interactions between different syntactic components of a sentence, such as sentiment words, entities, dummy words, and special punctuation that occur in the text. In order to improve the accuracy of Chinese sarcasm recognition, this paper proposes a multi-scale neural network sarcasm recognition algorithm incorporating a hierarchical representation of sentences, taking into account the semantic information of sentences and the relationship features between different syntactic components. The hierarchical syntactic tree is reconstructed to distinguish the key components of the sentence, and the multi-channel convolutional network is used to mine the relational features between syntactic levels and deeply fuse them with semantic information to perform the Chinese sarcastic sentiment recognition task. We have tested the method on a publicly available Chinese sarcastic comment dataset, and the results show that the method can effectively improve the accuracy rate of Chinese sarcastic sentiment recognition.
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