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Tree-Based Sentiment Dictionary for Affective Computing: A New Approach

机译:基于树的情感情感字典:一种新方法

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Affective computing is an emerging academic study area in computing technologies. Its purpose is to allow computers to understand emotions as humans do. At present, for affective computing with textual signals, the most common approach is sentiment lexicon approach. The majority of sentiment lexicons are stored in list of words with positivity and negativity. However, the one word might have various sentiment tendencies in various context. This problem can't be solved by these traditional sentiment lexicons which refers to list-based sentiment dictionary in domain of affective computing. In order to solve this problem, this paper presents a new approach that is a tree-based sentiment dictionary. In the tree structure, the similarities between sibling nodes under the same parent node is great but sibling nodes under different parent nodes is small. This paper uses these features to store the item classification in a tree structure and adds the features and sentiment words of the item which are extracted by using syntactic analysis and association rules to the tree structure to form a tree-based sentiment dictionary. In this way, we solve the problem that the one word may have various sentiment tendencies in various context and the problem of finding no sentiment words under the item classification in the dictionary. Comparing with sentiment lexicons, the tree-based sentiment dictionary outperforms for affective computing in the criteria, such as precision, recall, F-measure, etc.
机译:情感计算是计算技术领域一个新兴的学术研究领域。其目的是让计算机像人类一样理解情绪。当前,对于具有文本信号的情感计算,最常用的方法是情感词典方法。大部分情感词典都存储在具有阳性和阴性的单词列表中。但是,一个单词在不同的上下文中可能具有不同的情感倾向。这些传统的情感词典无法解决这个问题,在情感计算领域,这种词典是指基于列表的情感词典。为了解决这个问题,本文提出了一种新的方法,即基于树的情感字典。在树结构中,同一父节点下的同级节点之间的相似性很大,但不同父节点下的同级节点的相似性很小。本文利用这些特征将条目分类存储在树形结构中,并将通过句法分析和关联规则提取的条目的特征和情感词添加到树形结构中,从而形成基于树的情感字典。这样,我们解决了一个单词在各种情况下可能具有各种情感倾向的问题,以及在词典中的项目分类下找不到情感词的问题。与情感词典相比,基于树的情感词典在诸如精确度,召回率,F度量等标准中的情感计算方面表现出色。

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