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Adversarial learning of sentiment word representations for sentiment analysis

机译:情绪学习情绪分析的情绪词汇

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摘要

Word embeddings are used to represent words as distributed features, which can boost the performance on sentiment analysis tasks. However, most word embeddings consider only semantic and syntactic information and ignore sentiment information. Words with opposite sentiment polarities can have similar word embeddings (e.g., happy and sad or good and bad) as they have similar contexts. For incorporating sentiment information into word vectors, some approaches to sentiment embeddings are proposed. Based on the end-to-end architectures, these methods typically take the sentiment labels of whole sentences as outputs and use them to propagate gradients that update the context word vectors. Therefore, if the polarities of context words are inconsistent, they will still share the same gradient for updating. To address this, we have proposed an adversarial learning method for training sentiment word embeddings, in which the discriminator is employed to force the generator to produce high-quality word embeddings by using semantic and sentiment information. Additionally, the generator applies the multi-head self-attention to re-weight the gradients so that sentiment and semantic information are efficiently captured. Comparative experiments have been conducted with the word- and sentence-level benchmarks. The results demonstrate that the proposed method has outperformed previous sentiment embedding training models. (C) 2020 Elsevier Inc. All rights reserved.
机译:Word Embeddings用于表示作为分布式功能的单词,可以提高情绪分析任务的性能。但是,大多数Word Embeddings只考虑语义和句法信息并忽略情绪信息。具有相反情绪极性的词语可以具有类似的词嵌入式(例如,快乐,悲伤或好的和坏),因为它们具有相似的背景。为了将情感信息纳入字向量,提出了一些关于情绪嵌入的方法。基于端到端的架构,这些方法通常将整个句子的情绪标签作为输出占据,并使用它们来传播更新上下文字向量的渐变。因此,如果上下文词语的极性不一致,则它们仍将共享相同的渐变以进行更新。为了解决这个问题,我们提出了一种培训情绪词嵌入的对抗性学习方法,其中采用鉴别者强制发电机通过使用语义和情绪信息来生产高质量的单词嵌入。另外,发电机应用多头自我注意重量梯度,以便有效地捕获情绪和语义信息。对比较实验与单词和句子级基准进行。结果表明,该方法已经表明了先前的情绪嵌入训练模型。 (c)2020 Elsevier Inc.保留所有权利。

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