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A comparison of approaches to affective rating of Chinese words on valence-arousal space

机译:汉语词汇中汉语词汇曲线方法比较

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The word-level sentiment analysis is an essential issue in opinion mining. One challenge in this field is that not so many lexical items as expected have been labeled with sentimental opinions, especially in Chinese. There are two ways of rating words: one is manual marking which costs lots of resources, energy and time; the other is machine marking which is efficient, convenient and time-saving. There are a few machine rating approaches such as linear regression, support vector regression and weighted graph method. This paper compares the three approaches of linear regression, vector regression and kernel models based on valence-arousal (VA) space in order to study an effective and accurate machine learning algorithm for increasing more Chinese affective words on the existing affective lexicon.
机译:词级情绪分析是意见采矿中的重要问题。这一领域的一个挑战是,由于预期的疑望不同,这不是那么多的词汇,尤其是汉语。有两种评级词语:一个是手动标记,其需要大量资源,能量和时间;另一个是机器标记,其高效,方便,节省时间。有几种机器额定值方法,如线性回归,支持向量回归和加权图方法。本文比较了基于价值(VA)空间的线性回归,向量回归和内核模型的三种方法,以研究了一种有效准确的机器学习算法,以增加现有情感词典中的更多中国情感词。

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