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Fuzzy Ontology and LSTM-Based Text Mining: A Transportation Network Monitoring System for Assisting Travel

机译:基于模糊本体和基于LSTM的文本挖掘:辅助旅行的交通网络监控系统

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摘要

Intelligent Transportation Systems (ITSs) utilize a sensor network-based system to gather and interpret traffic information. In addition, mobility users utilize mobile applications to collect transport information for safe traveling. However, these types of information are not sufficient to examine all aspects of the transportation networks. Therefore, both ITSs and mobility users need a smart approach and social media data, which can help ITSs examine transport services, support traffic and control management, and help mobility users travel safely. People utilize social networks to share their thoughts and opinions regarding transportation, which are useful for ITSs and travelers. However, user-generated text on social media is short in length, unstructured, and covers a broad range of dynamic topics. The application of recent Machine Learning (ML) approach is inefficient for extracting relevant features from unstructured data, detecting word polarity of features, and classifying the sentiment of features correctly. In addition, ML classifiers consistently miss the semantic feature of the word meaning. A novel fuzzy ontology-based semantic knowledge with Word2vec model is proposed to improve the task of transportation features extraction and text classification using the Bi-directional Long Short-Term Memory (Bi-LSTM) approach. The proposed fuzzy ontology describes semantic knowledge about entities and features and their relation in the transportation domain. Fuzzy ontology and smart methodology are developed in Web Ontology Language and Java, respectively. By utilizing word embedding with fuzzy ontology as a representation of text, Bi-LSTM shows satisfactory improvement in both the extraction of features and the classification of the unstructured text of social media.
机译:智能交通系统(ITS)利用基于传感器网络的系统来收集和解释交通信息。另外,移动用户利用移动应用程序来收集运输信息以安全旅行。但是,这些类型的信息不足以检查运输网络的所有方面。因此,ITS和移动用户都需要一种智能方法和社交媒体数据,这可以帮助ITS检查运输服务,支持交通和控制管理,并帮助移动用户安全出行。人们利用社交网络分享他们对交通的想法和观点,这对于ITS和旅行者都是有用的。但是,用户在社交媒体上生成的文本长度短,结构混乱,并且涵盖了广泛的动态主题。最近的机器学习(ML)方法的应用在从非结构化数据中提取相关特征,检测特征的单词极性以及正确分类特征情感方面效率低下。此外,机器学习分类器始终缺少单词含义的语义特征。提出了一种基于Word2vec模型的基于模糊本体的新型语义知识,以利用双向长短期记忆(Bi-LSTM)方法改善交通特征提取和文本分类的任务。所提出的模糊本体描述了关于实体和特征及其在运输领域中的关系的语义知识。模糊本体和智能方法分别用Web本体语言和Java开发。通过使用带有模糊本体的词嵌入作为文本表示,Bi-LSTM在社交媒体的特征提取和非结构化文本的分类方面显示出令人满意的改进。

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