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Sentiment Classification by Combining Triplet Belief Functions

机译:通过组合三重态信仰功能的情感分类

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Sentiment analysis is an emerging technique that caters for semantic orientation and opinion mining. It is increasingly used to analyse online product reviews for identifying customers' opinions and attitudes to products or services in order to improve business performance of companies. This paper presents an innovative approach to combining outputs of sentiment classifiers under the framework of belief functions. The approach is composed of the formulation of outputs of sentiment classifiers in the triplet structure and adoption of its formulas to combining simple support functions derived from triplet functions by evidential combination rules. The empirical studies have been conducted on the performance of sentiment classification individually and in combination, the experimental results show that the best combined classifiers made by these combination rules outperform the best individual classifiers over the MP3 and Movie-Review datasets.
机译:情绪分析是一种新兴的技术,即迎合语义定位和意见挖掘。越来越多地用于分析在线产品审查,以确定客户的意见和对产品或服务的态度,以提高公司的业务表现。本文提出了一种创新方法,可以在信仰函数框架下结合情绪分类器的产出。该方法由三联结构中的情绪分类器的输出组成,并采用其公式,以通过证据组合规则组合从三联功能衍生的简单支持函数。经验研究已经在单独和组合中进行情绪分类的性能,实验结果表明,这些组合规则所做的最佳组合分类机器优于MP3和电影审查数据集中的最佳单个分类器。

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