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Feature-based Transportation Sentiment Analysis Using Fuzzy Ontology and SentiWordNet

机译:基于模糊本体和SentiWordNet的基于特征的交通情感分析

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People are using social media to share their opinions and thoughts about transportation. Sentiment analysis can study these opinions and emotions for the evaluation and improvement of transportation features and services. However, the transportation-related data on social media are unstructured, short length and with a lot of dynamic topics. In addition, the existing systems are discovering sentiments at sentence or document level. These systems are inefficient to extract relevant features, identify polarity orientation of features, and classify the sentiment of features. Therefore, we present a new approach of sentiment analysis for feature extraction and polarity classification. The proposed system is based on fuzzy ontology that presents the relations between concepts semantically in the domain of transportation. The semantic knowledge is employed to identify features in document. The polarity of these features is computed by assigning their opinionated words in document into SentiWordNet. We use logistic regression and multi-layer perceptron along with fuzzy ontology. The experimental results show that fuzzy ontology with learning algorithm is more effective than classifiers without ontology.
机译:人们正在使用社交媒体分享他们对交通的看法和想法。情感分析可以研究这些意见和情感,以评估和改善运输功能和服务。但是,社交媒体上与运输相关的数据是非结构化的,篇幅短且具有很多动态主题。另外,现有系统正在句子或文档级别发现情感。这些系统无法有效提取相关特征,识别特征的极性方向以及对特征的情绪进行分类。因此,我们提出了一种用于特征提取和极性分类的情感分析新方法。所提出的系统基于模糊本体,该本体在运输领域中以语义方式呈现概念之间的关系。语义知识用于识别文档中的特征。这些功能的极性是通过将其在文档中指定的单词分配给SentiWordNet来计算的。我们使用逻辑回归和多层感知器以及模糊本体。实验结果表明,带有学习算法的模糊本体比没有本体的分类器更有效。

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