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A regression approach to valence-arousal ratings of words from word embedding

机译:词嵌入中词的价-价评级的回归方法

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Traditional affective lexicons are mainly based on discrete classes, such as positive, happiness, sadness, which may limit its expressive power compared to the dimensional representation in which affective meanings are expressed through continuous numerical values on multiple dimensions, such as valence-arousal. Traditional methods for acquiring dimensional lexicons are mainly based on time-consuming manual annotation. In this paper, we propose a regression-based method to automatically infer the valence-arousal ratings of words via their word embedding. This method is based on the assumption that different features in word embedding contribute differently to different affective meanings. Experiments on three valence-arousal lexicons show that our method outperforms the state-of-the-art method on all the lexicons under four different evaluation metrics. Our model also has superior computation advantage over the state-of-the-art model.
机译:传统的情感词典主要基于离散类,例如正面,幸福,悲伤,这与通过在多个维度(例如,价基)上通过连续的数值表示情感含义的维度表示相比,可能会限制其表达能力。获取维度词典的传统方法主要基于耗时的手动注释。在本文中,我们提出了一种基于回归的方法,可以通过词的嵌入自动推断词的价价等级。此方法基于以下假设:单词嵌入中的不同特征对不同的情感含义的贡献不同。在三个价数词汇词典上进行的实验表明,在四个不同的评估指标下,我们的方法在所有词汇上的表现均优于最新方法。与最新模型相比,我们的模型还具有优越的计算优势。

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